{"id":189940,"date":"2025-08-31T19:33:27","date_gmt":"2025-08-31T19:33:27","guid":{"rendered":"https:\/\/www.europesays.com\/us\/189940\/"},"modified":"2025-08-31T19:33:27","modified_gmt":"2025-08-31T19:33:27","slug":"noncontrast-ct-based-deep-learning-for-predicting-intracerebral-hemorrhage-expansion-incorporating-growth-of-intraventricular-hemorrhage","status":"publish","type":"post","link":"https:\/\/www.europesays.com\/us\/189940\/","title":{"rendered":"Noncontrast CT-based deep learning for predicting intracerebral hemorrhage expansion incorporating growth of intraventricular hemorrhage"},"content":{"rendered":"<p>In this study, we developed 2D\/3D CNN models based on NCCT images to predict high-risk rHE in ICH patients and compared its performance with four baseline ML models. The main findings showed that the developed 2D-ResNet-101 model had the optimal predictive performance, demonstrating significant improvement over the BRAIN score and clinical-radiologic model in both the internal- and external-testing sets. Furthermore, it exhibited higher sensitivity and accuracy than the two combined models in the testing sets. These findings suggest that the deep learning model may provide more comprehensive information about hematoma heterogeneity compared to routine clinical predictive indicators and radiomics features alone can, thus more effectively predicting the rHE. This model could allow the identification of patients who may benefit from anti-expansion therapies in the acute ICH settings.<\/p>\n<p>Spontaneous ICH is the deadliest acute stroke type, with high morbidity and mortality<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 25\" title=\"Lioutas, V. A. et al. Assessment of incidence and risk factors of intracerebral hemorrhage among participants in the Framingham heart study between 1948 and 2016. JAMA Neurol. 77, 1252&#x2013;1260. &#010;                  https:\/\/doi.org\/10.1001\/jamaneurol.2020.1512&#010;                  &#010;                 (2020).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR25\" id=\"ref-link-section-d467792648e5883\" target=\"_blank\" rel=\"noopener\">25<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 26\" title=\"GBD 2019 Stroke Collaborators. Global, regional, and National burden of stroke and its risk factors, 1990&#x2013;2019: a systematic analysis for the global burden of disease study 2019. Lancet Neurol. 20, 795&#x2013;820. &#010;                  https:\/\/doi.org\/10.1016\/S1474-4422(21)00252-0&#010;                  &#010;                 (2021).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR26\" id=\"ref-link-section-d467792648e5886\" target=\"_blank\" rel=\"noopener\">26<\/a>. Notably, in real-world clinical scenarios, parenchymal hematomas often extend into the ventricular space<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 27\" title=\"Maas, M. B. et al. Delayed intraventricular hemorrhage is common and worsens outcomes in intracerebral hemorrhage. Neurology 80, 1295&#x2013;1299. &#010;                  https:\/\/doi.org\/10.1212\/WNL.0b013e31828ab2a7&#010;                  &#010;                 (2013).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR27\" id=\"ref-link-section-d467792648e5890\" target=\"_blank\" rel=\"noopener\">27<\/a>\u00a0and the extent of this extension correlates exponentially with patient outcomes<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 28\" title=\"Yogendrakumar, V. et al. New and expanding ventricular hemorrhage predicts poor outcome in acute intracerebral hemorrhage. Neurology 93, e879&#x2013;e888. &#010;                  https:\/\/doi.org\/10.1212\/WNL.0000000008007&#010;                  &#010;                 (2019).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR28\" id=\"ref-link-section-d467792648e5894\" target=\"_blank\" rel=\"noopener\">28<\/a>. In the present research, we included IVH expansion in the definition of cHE and explored potential clinical-radiologic factors affecting rHE. Multivariate regression analysis identified significant differences in the onset to baseline CT time interval, ICH volume, and presence of IVH between the groups, with patients who developed rHE showing shorter baseline scan intervals, larger ICH volumes, and a higher likelihood of IVH (Table\u00a0<a data-track=\"click\" data-track-label=\"link\" data-track-action=\"table anchor\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#Tab2\" target=\"_blank\" rel=\"noopener\">2<\/a>). These findings highlight the urgent need for rapid assessment and intervention to limit ICH growth and improve outcomes, especially for infratentorial hemorrhage. This hemorrhage may disrupt neural pathways related to the Guillain-Morath triangle, a network critical for movement coordination and control, and dysfunction of which can lead to a variety of neurological disorders, such as post-stroke palatal tremor<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 29\" title=\"Ogut, E., Armagan, K. &amp; Tufekci, D. The Guillain-Mollaret triangle: a key player in motor coordination and control with implications for neurological disorders. Neurosurgical Rev. 46, 181. &#010;                  https:\/\/doi.org\/10.1007\/s10143-023-02086-1&#010;                  &#010;                 (2023).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR29\" id=\"ref-link-section-d467792648e5901\" target=\"_blank\" rel=\"noopener\">29<\/a>. According to the 2022 AHA\/ASA guidelines, NCCT markers are valuable potential imaging predictors for identifying patients at risk of rHE<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 10\" title=\"Greenberg, S. M. et al. 2022 guideline for the management of patients with spontaneous intracerebral hemorrhage: a guideline from the American heart association\/american stroke association. Stroke 53, e282&#x2013;e361. &#010;                  https:\/\/doi.org\/10.1161\/STR.0000000000000407&#010;                  &#010;                 (2022).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR10\" id=\"ref-link-section-d467792648e5906\" target=\"_blank\" rel=\"noopener\">10<\/a>. Our analysis showed that hypodensities were the only independent risk factor among the nine NCCT markers, likely indicating areas of incomplete blood clotting prone to instability and further bleeding<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 30\" title=\"Morotti, A. et al. Using Noncontrast computed tomography to improve prediction of intracerebral hemorrhage expansion. Stroke 54, 567&#x2013;574. &#010;                  https:\/\/doi.org\/10.1161\/STROKEAHA.122.041302&#010;                  &#010;                 (2023).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR30\" id=\"ref-link-section-d467792648e5910\" target=\"_blank\" rel=\"noopener\">30<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 31\" title=\"Boulouis, G. et al. Association between hypodensities detected by computed tomography and hematoma expansion in patients with intracerebral hemorrhage. JAMA Neurol. 73, 961&#x2013;968. &#010;                  https:\/\/doi.org\/10.1001\/jamaneurol.2016.1218&#010;                  &#010;                 (2016).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR31\" id=\"ref-link-section-d467792648e5913\" target=\"_blank\" rel=\"noopener\">31<\/a>. Hypodensities also overlap with other NCCT signs<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 32\" title=\"Song, L. et al. Combining non-Contrast CT signs with onset-to-imaging time to predict the evolution of intracerebral hemorrhage. Korean J. Radiol. 25, 166&#x2013;178. &#010;                  https:\/\/doi.org\/10.3348\/kjr.2023.0591&#010;                  &#010;                 (2024).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR32\" id=\"ref-link-section-d467792648e5917\" target=\"_blank\" rel=\"noopener\">32<\/a>\u00a0and their high prevalence may support their role as a predictor. We also developed the BRAIN score and a clinical-radiologic model based on routinely available clinical variables, but these demonstrated limited predictive performance in the testing sets. The sensitivity of these models ranged from 0.350 to 0.488, suggesting a substantial risk of missing rHE diagnoses, which could lead to delayed treatment and potentially serious consequences. These findings highlight the limitations of clinical-radiologic features in predicting rHE, likely due to their qualitative or semiquantitative nature, which can introduce subjectivity and inconsistency in predictions<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 33\" title=\"Nehme, A. et al. Non-contrast CT markers of intracerebral hematoma expansion: a reliability study. Eur. Radiol. 32, 6126&#x2013;6135. &#010;                  https:\/\/doi.org\/10.1007\/s00330-022-08710-w&#010;                  &#010;                 (2022).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR33\" id=\"ref-link-section-d467792648e5921\" target=\"_blank\" rel=\"noopener\">33<\/a>. This was further evidenced by variability in inter- and intra-observer agreement regarding NCCT markers in this study.<\/p>\n<p>Recent studies have shown promising results using traditional machine learning (ML) methods, including radiomics and deep learning, to predict intracerebral hemorrhage (ICH) growth. Feng and Pszczolkowski et al. applied deep learning radiomics or radiomics features derived from NCCT images to predict cHE, achieving AUCs ranging from 0.693 to 0.820<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 16\" title=\"Feng, C. et al. Prediction of early hematoma expansion of spontaneous intracerebral hemorrhage based on deep learning radiomics features of Noncontrast computed tomography. Eur. Radiol. 34, 2908&#x2013;2920. &#010;                  https:\/\/doi.org\/10.1007\/s00330-023-10410-y&#010;                  &#010;                 (2024).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR16\" id=\"ref-link-section-d467792648e5928\" target=\"_blank\" rel=\"noopener\">16<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 34\" title=\"Pszczolkowski, S. et al. Quantitative CT radiomics-based models for prediction of haematoma expansion and poor functional outcome in primary intracerebral haemorrhage. Eur. Radiol. 31, 7945&#x2013;7959. &#010;                  https:\/\/doi.org\/10.1007\/s00330-021-07826-9&#010;                  &#010;                 (2021).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR34\" id=\"ref-link-section-d467792648e5931\" target=\"_blank\" rel=\"noopener\">34<\/a>. Xia et al. combined radiomics features with clinical-semantic factors to enhance rHE prediction, achieving an AUC of 0.830 compared to 0.690 for clinical-semantic models alone, though this study had a small sample size<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 35\" title=\"Xia, X. et al. Radiomics for predicting revised hematoma expansion with the inclusion of intraventricular hemorrhage growth in patients with supratentorial spontaneous intraparenchymal hematomas. Ann. Transl Med. 10, 8. &#010;                  https:\/\/doi.org\/10.21037\/atm-21-6158&#010;                  &#010;                 (2022).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR35\" id=\"ref-link-section-d467792648e5935\" target=\"_blank\" rel=\"noopener\">35<\/a>. In our study, with a larger two-center sample, the addition of radiomics features to the clinical-radiologic model improved rHE prediction performance in the external-testing set, consistent with previous findings<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 16\" title=\"Feng, C. et al. Prediction of early hematoma expansion of spontaneous intracerebral hemorrhage based on deep learning radiomics features of Noncontrast computed tomography. Eur. Radiol. 34, 2908&#x2013;2920. &#010;                  https:\/\/doi.org\/10.1007\/s00330-023-10410-y&#010;                  &#010;                 (2024).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR16\" id=\"ref-link-section-d467792648e5939\" target=\"_blank\" rel=\"noopener\">16<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 35\" title=\"Xia, X. et al. Radiomics for predicting revised hematoma expansion with the inclusion of intraventricular hemorrhage growth in patients with supratentorial spontaneous intraparenchymal hematomas. Ann. Transl Med. 10, 8. &#010;                  https:\/\/doi.org\/10.21037\/atm-21-6158&#010;                  &#010;                 (2022).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR35\" id=\"ref-link-section-d467792648e5942\" target=\"_blank\" rel=\"noopener\">35<\/a>. However, both combined models exhibited reduced generalizability, likely due to the limited robustness of handcrafted radiomics features, which suffer from low reproducibility across different CT devices and protocols<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 36\" title=\"Meyer, M. et al. Reproducibility of CT radiomic features within the same patient: influence of radiation dose and CT reconstruction settings. Radiology 293, 583&#x2013;591. &#010;                  https:\/\/doi.org\/10.1148\/radiol.2019190928&#010;                  &#010;                 (2019).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR36\" id=\"ref-link-section-d467792648e5946\" target=\"_blank\" rel=\"noopener\">36<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 37\" title=\"Lee, S. B. et al. Deep learning-based image conversion improves the reproducibility of computed tomography radiomics features: a Phantom study. Invest. Radiol. 57, 308&#x2013;317. &#010;                  https:\/\/doi.org\/10.1097\/RLI.0000000000000839&#010;                  &#010;                 (2022).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR37\" id=\"ref-link-section-d467792648e5949\" target=\"_blank\" rel=\"noopener\">37<\/a>. Furthermore, radiomics features may fail to capture the semantic characteristics of NCCT markers<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 16\" title=\"Feng, C. et al. Prediction of early hematoma expansion of spontaneous intracerebral hemorrhage based on deep learning radiomics features of Noncontrast computed tomography. Eur. Radiol. 34, 2908&#x2013;2920. &#010;                  https:\/\/doi.org\/10.1007\/s00330-023-10410-y&#010;                  &#010;                 (2024).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR16\" id=\"ref-link-section-d467792648e5953\" target=\"_blank\" rel=\"noopener\">16<\/a>. In contrast, deep learning automatically learns complex, discriminative features directly from images through neural network layers, eliminating the need for manual extraction of hard-coded features<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 18\" title=\"LeCun, Y., Bengio, Y. &amp; Hinton, G. Deep learning. Nature 521, 436&#x2013;444. &#010;                  https:\/\/doi.org\/10.1038\/nature14539&#010;                  &#010;                 (2015).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR18\" id=\"ref-link-section-d467792648e5958\" target=\"_blank\" rel=\"noopener\">18<\/a>. Most studies have focused on using deep learning models to predict cHE<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 20\" title=\"Li, N. et al. A deep learning-based framework for predicting intracerebral hematoma expansion using head non-contrast CT scan. Acad. Radiol. 32, 347&#x2013;358. &#010;                  https:\/\/doi.org\/10.1016\/j.acra.2024.07.039&#010;                  &#010;                 (2025).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR20\" id=\"ref-link-section-d467792648e5962\" target=\"_blank\" rel=\"noopener\">20<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 21\" title=\"Tran, A. T. et al. Uncertainty-aware deep-learning model for prediction of supratentorial hematoma expansion from admission non-contrast head computed tomography scan. NPJ Digit. Med. 7, 26. &#010;                  https:\/\/doi.org\/10.1038\/s41746-024-01007-w&#010;                  &#010;                 (2024).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR21\" id=\"ref-link-section-d467792648e5965\" target=\"_blank\" rel=\"noopener\">21<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" title=\"Yalcin, C. et al. Hematoma expansion prediction in intracerebral hemorrhage patients by using synthesized CT images in an end-to-end deep learning framework. Comput. Med. Imaging Graph. 117, 102430. &#10;                  https:\/\/doi.org\/10.1016\/j.compmedimag.2024.102430&#10;                  &#10;                 (2024).\" href=\"#ref-CR38\" id=\"ref-link-section-d467792648e5968\">38<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" title=\"Kumar, A. et al. Predicting hematoma expansion using machine learning: an exploratory analysis of the ATACH2 trial. J. Neurol. Sci. 461, 123048. &#10;                  https:\/\/doi.org\/10.1016\/j.jns.2024.123048&#10;                  &#10;                 (2024).\" href=\"#ref-CR39\" id=\"ref-link-section-d467792648e5968_1\">39<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 40\" title=\"Teng, L. et al. Artificial intelligence can effectively predict early hematoma expansion of intracerebral hemorrhage analyzing Noncontrast computed tomography image. Front. Aging Neurosci. 13, 632138. &#010;                  https:\/\/doi.org\/10.3389\/fnagi.2021.632138&#010;                  &#010;                 (2021).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR40\" id=\"ref-link-section-d467792648e5971\" target=\"_blank\" rel=\"noopener\">40<\/a>. In these studies, the follow-up hematoma volume may include both parenchymal hemorrhage and IVH hemorrhage. However, IVH expansion may occur independently of parenchymal hematoma, a factor often overlooked in large dataset studies, such as those by Li<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 20\" title=\"Li, N. et al. A deep learning-based framework for predicting intracerebral hematoma expansion using head non-contrast CT scan. Acad. Radiol. 32, 347&#x2013;358. &#010;                  https:\/\/doi.org\/10.1016\/j.acra.2024.07.039&#010;                  &#010;                 (2025).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR20\" id=\"ref-link-section-d467792648e5975\" target=\"_blank\" rel=\"noopener\">20<\/a> and Teng<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 40\" title=\"Teng, L. et al. Artificial intelligence can effectively predict early hematoma expansion of intracerebral hemorrhage analyzing Noncontrast computed tomography image. Front. Aging Neurosci. 13, 632138. &#010;                  https:\/\/doi.org\/10.3389\/fnagi.2021.632138&#010;                  &#010;                 (2021).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR40\" id=\"ref-link-section-d467792648e5979\" target=\"_blank\" rel=\"noopener\">40<\/a>\u00a0which limits confidence in deep learning\u2019s ability to predict rHE risk. Our results demonstrate that 2D CNN models based on baseline NCCT images outperform traditional ML models, suggesting that 2D deep learning may significantly enhance predictive accuracy for rHE.<\/p>\n<p>In this study, we developed eight deep learning models to predict rHE, with the 2D-CNN models outperforming the 3D-CNN models in the testing sets. The differences in performance among the different 3D-CNN or 2D-CNN models may be attributed to the differing internal architectures of each network<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 41\" title=\"Fujima, N. et al. Utility of deep learning for the diagnosis of otosclerosis on Temporal bone CT. Eur. Radiol. 31, 5206&#x2013;5211. &#010;                  https:\/\/doi.org\/10.1007\/s00330-020-07568-0&#010;                  &#010;                 (2021).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR41\" id=\"ref-link-section-d467792648e5986\" target=\"_blank\" rel=\"noopener\">41<\/a>. Previous studies have demonstrated that 3D images, which contain richer 3D spatial information compared to 2D images<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 42\" title=\"Saleem, M. A. et al. Comparative analysis of recent architecture of convolutional neural network. Mathematical Problems in Engineering, 7313612. (2022). &#010;                  https:\/\/doi.org\/10.1155\/2022\/7313612&#010;                  &#010;                 (2022).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR42\" id=\"ref-link-section-d467792648e5990\" target=\"_blank\" rel=\"noopener\">42<\/a>\u00a0typically achieve superior performance in disease prediction tasks<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 43\" title=\"Wang, W. et al. Comparing three-dimensional and two-dimensional deep-learning, radiomics, and fusion models for predicting occult lymph node metastasis in laryngeal squamous cell carcinoma based on CT imaging: a multicentre, retrospective, diagnostic study. EClinicalMedicine 67, 102385. &#010;                  https:\/\/doi.org\/10.1016\/j.eclinm.2023.102385&#010;                  &#010;                 (2024).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR43\" id=\"ref-link-section-d467792648e5994\" target=\"_blank\" rel=\"noopener\">43<\/a>. However, in our study, the 3D-CNN models exhibited limited predictive capability, possibly due to their higher complexity and larger number of parameters, which may not be well-suited for small sample sizes of 3D data<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 43\" title=\"Wang, W. et al. Comparing three-dimensional and two-dimensional deep-learning, radiomics, and fusion models for predicting occult lymph node metastasis in laryngeal squamous cell carcinoma based on CT imaging: a multicentre, retrospective, diagnostic study. EClinicalMedicine 67, 102385. &#010;                  https:\/\/doi.org\/10.1016\/j.eclinm.2023.102385&#010;                  &#010;                 (2024).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR43\" id=\"ref-link-section-d467792648e5998\" target=\"_blank\" rel=\"noopener\">43<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 44\" title=\"Singh, S. P. et al. 3D deep learning on medical images: a review. Sensors 20, 5097. &#010;                  https:\/\/doi.org\/10.3390\/s20185097&#010;                  &#010;                 (2020).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR44\" id=\"ref-link-section-d467792648e6001\" target=\"_blank\" rel=\"noopener\">44<\/a>. Additionally, the lack of pretrained model weights and the low resolution of 3D NCCT images along the z-axis (5\u00a0mm slice thickness) could have further hindered their performance<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 45\" title=\"Titano, J. J. et al. Automated deep-neural-network surveillance of cranial images for acute neurologic events. Nat. Med. 24, 1337&#x2013;1341. &#010;                  https:\/\/doi.org\/10.1038\/s41591-018-0147-y&#010;                  &#010;                 (2018).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR45\" id=\"ref-link-section-d467792648e6005\" target=\"_blank\" rel=\"noopener\">45<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 46\" title=\"Yang, J. et al. AlignShift: Bridging the gap of imaging thickness in 3D anisotropic volumes. In: Martel, A.L., Abolmaesumi, P., Stoyanov, D. et al. (eds.) Medical Image Computing and Computer Assisted Intervention (MICCAI) 562&#x2013;572 (Springer, Cham, 2020)\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR46\" id=\"ref-link-section-d467792648e6008\" target=\"_blank\" rel=\"noopener\">46<\/a>. Although the 2D-CNN models achieved relatively high performance, their lack of spatial information may hinder accurate modeling of peri-hematomal structures. An approach that balances the advantages of both 2D and 3D modeling may optimize the trade-off between computational efficiency and model generalizability for limited datasets<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 47\" title=\"Zhang, Y., Liao, Q., Ding, L. &amp; Zhang, J. Bridging 2D and 3D segmentation networks for computation-efficient volumetric medical image segmentation: an empirical study of 2.5D solutions. Comput. Med. Imaging Graph. 99, 102088. &#010;                  https:\/\/doi.org\/10.1016\/j.compmedimag.2022.102088&#010;                  &#010;                 (2022).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR47\" id=\"ref-link-section-d467792648e6013\" target=\"_blank\" rel=\"noopener\">47<\/a>.<\/p>\n<p>Among the 2D-CNN models in our study, the 2D-ResNet-101, a deep network with 101 layers utilizing residual connections, demonstrated superior predictive performance and improved generalization<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 48\" title=\"He, K., Zhang, X., Ren, S. &amp; Sun, J. Deep residual learning for image recognition. In: 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR) 770&#x2013;778IEEE, (2016).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR48\" id=\"ref-link-section-d467792648e6021\" target=\"_blank\" rel=\"noopener\">48<\/a>. While deeper networks can learn more complex representations, increasing depth does not always lead to better model performance due to challenges in gradient descent<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" title=\"Nagpal, P., Bhinge, S. A. &amp; Shitole, A. A comparative analysis of ResNet architectures. In: International Conference on Smart Generation Computing, Communication and Networking (SMART GENCON) 1&#x2013;8 (IEEE, 2022).\" href=\"#ref-CR49\" id=\"ref-link-section-d467792648e6025\">49<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" title=\"Gupta, R. &amp; Jindal, R. Impact of too many neural network layers on overfitting. Int. J. Comput. Sci. Mob. Comput. 14, 1&#x2013;14. &#10;                  https:\/\/doi.org\/10.47760\/ijcsmc.2025.v14i05.001&#10;                  &#10;                 (2025).\" href=\"#ref-CR50\" id=\"ref-link-section-d467792648e6025_1\">50<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 51\" title=\"Tan, M., Le, Q. V. &amp; EfficientNet Rethinking model scaling for convolutional neural networks. In: Proceedings of the 36th International Conference on Machine Learning (ICML) 6105&#x2013;6114PMLR, (2019).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR51\" id=\"ref-link-section-d467792648e6028\" target=\"_blank\" rel=\"noopener\">51<\/a>. This was further supported by our finding that, in most CNN models, greater depth reduced performance on the external-testing set (Table\u00a0<a data-track=\"click\" data-track-label=\"link\" data-track-action=\"table anchor\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#Tab3\" target=\"_blank\" rel=\"noopener\">3<\/a>). In our study, ResNet outperformed DenseNet, possibly owing to its simpler residual structure and lower memory complexity, which may confer greater robustness under relatively small-sample conditions<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 52\" title=\"Li, G. Discussion on image recognition under different conditions of ResNet and densenet. Appl. Comput. Eng. 4, 636&#x2013;641. &#010;                  https:\/\/doi.org\/10.54254\/2755-2721\/4\/2023365&#010;                  &#010;                 (2023).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR52\" id=\"ref-link-section-d467792648e6035\" target=\"_blank\" rel=\"noopener\">52<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 53\" title=\"Zhang, C. et al. IEEE,. ResNet or DenseNet? Introducing dense shortcuts to ResNet. In: Proceedings of the IEEE\/CVF Winter Conference on Applications of Computer Vision (WACV) 3543&#x2013;3552 (2021).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR53\" id=\"ref-link-section-d467792648e6038\" target=\"_blank\" rel=\"noopener\">53<\/a>. Previous studies have shown the effectiveness of deep residual networks in ICH disease classification<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 21\" title=\"Tran, A. T. et al. Uncertainty-aware deep-learning model for prediction of supratentorial hematoma expansion from admission non-contrast head computed tomography scan. NPJ Digit. Med. 7, 26. &#010;                  https:\/\/doi.org\/10.1038\/s41746-024-01007-w&#010;                  &#010;                 (2024).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR21\" id=\"ref-link-section-d467792648e6042\" target=\"_blank\" rel=\"noopener\">21<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 54\" title=\"Zhou, Q. et al. Transfer learning of the ResNet-18 and DenseNet-121 model used to diagnose intracranial hemorrhage in CT scanning. Curr. Pharm. Des. 28, 287&#x2013;295. &#010;                  https:\/\/doi.org\/10.2174\/1381612827666211213143357&#010;                  &#010;                 (2022).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR54\" id=\"ref-link-section-d467792648e6045\" target=\"_blank\" rel=\"noopener\">54<\/a>. Grad-CAM visualizations demonstrated that the 2D-ResNet-101 model primarily focused on the hematoma and its periphery for decision-making, consistent with observations reported by Zhao et al. and Trans et al.<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 21\" title=\"Tran, A. T. et al. Uncertainty-aware deep-learning model for prediction of supratentorial hematoma expansion from admission non-contrast head computed tomography scan. NPJ Digit. Med. 7, 26. &#010;                  https:\/\/doi.org\/10.1038\/s41746-024-01007-w&#010;                  &#010;                 (2024).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR21\" id=\"ref-link-section-d467792648e6050\" target=\"_blank\" rel=\"noopener\">21<\/a>,<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 55\" title=\"Zhao, X. et al. Explainable CT-based deep learning model for predicting hematoma expansion including intraventricular hemorrhage growth. iScience, 28, 112888. (2025). &#010;                  https:\/\/doi.org\/10.1016\/j.isci.2025.112888&#010;                  &#010;                \" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR55\" id=\"ref-link-section-d467792648e6053\" target=\"_blank\" rel=\"noopener\">55<\/a>. Notably, rHE tends to demonstrate more irregular morphology and internal density heterogeneity compared to non-rHE (Fig.\u00a0<a data-track=\"click\" data-track-label=\"link\" data-track-action=\"figure anchor\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#Fig5\" target=\"_blank\" rel=\"noopener\">5<\/a>A). This peripheral-focused attention pattern may correspond to NCCT markers of active multifocal bleeding, such as irregular shape<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 56\" title=\"Barras, C. D. et al. Density and shape as CT predictors of intracerebral hemorrhage growth. Stroke 40, 1325&#x2013;1331. &#010;                  https:\/\/doi.org\/10.1161\/STROKEAHA.108.536888&#010;                  &#010;                 (2009).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR56\" id=\"ref-link-section-d467792648e6060\" target=\"_blank\" rel=\"noopener\">56<\/a> (Fig.\u00a0<a data-track=\"click\" data-track-label=\"link\" data-track-action=\"figure anchor\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#Fig5\" target=\"_blank\" rel=\"noopener\">5<\/a>A, Case2). These findings may support for Fisher\u2019s \u2018avalanche model\u2019 of HE, which proposes that initial bleeding disrupts adjacent vessels, leading to surrounding secondary hemorrhage<a data-track=\"click\" data-track-action=\"reference anchor\" data-track-label=\"link\" data-test=\"citation-ref\" aria-label=\"Reference 57\" title=\"Fisher, C. M. Pathological observations in hypertensive cerebral hemorrhage. J. Neuropathol. Exp. Neurol. 30, 536&#x2013;550. &#010;                  https:\/\/doi.org\/10.1097\/00005072-197107000-00015&#010;                  &#010;                 (1971).\" href=\"http:\/\/www.nature.com\/articles\/s41598-025-17393-4#ref-CR57\" id=\"ref-link-section-d467792648e6067\" target=\"_blank\" rel=\"noopener\">57<\/a>. Furthermore, the 2D-ResNet-101 model achieved significantly higher sensitivity than the baseline models, without significant decrease in specificity, indicating that a higher proportion of ICH patients at high risk for rHE can be identified early, thereby helping to ensure that these patients receive timely, early-stage anti-expansion treatments or surgical intervention, as needed.<\/p>\n<p>This study has several limitations. First, due to its retrospective design, some important clinical parameters such as Glasgow Coma Scale scores were unavailable. Therefore, a prospective study is necessary to validate the deep learning model\u2019s performance and further explore the relationship between rHE and clinical variables. Second, the relatively small sample size limits the generalizability of the findings. A multi-center trial with larger datasets is essential to assess the model\u2019s applicability in real-world clinical settings. Third, while the current standard for rHE relies on semiautomatic delineation software with manual adjustment, detecting small volume changes, particularly in IVH expansion (\u2265\u20091 mL), can be challenging due to technological limitations. Implementing fully automated, high-precision IVH delineation may enhance accuracy and reduce human error. Finally, the developed deep learning models primarily focused on image-based predictions without incorporating clinical-radiologic variables. However, medical decisions are multifactorial and not solely based on imaging findings. Future research should aim to integrate these variables to further improve model performance.<\/p>\n","protected":false},"excerpt":{"rendered":"In this study, we developed 2D\/3D CNN models based on NCCT images to predict high-risk rHE in ICH&hellip;\n","protected":false},"author":3,"featured_media":189941,"comment_status":"","ping_status":"","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[21],"tags":[691,738,106204,16622,884,10046,106202,8523,3740,10047,912,831,106203,159,158,67,132,68],"class_list":{"0":"post-189940","1":"post","2":"type-post","3":"status-publish","4":"format-standard","5":"has-post-thumbnail","7":"category-artificial-intelligence","8":"tag-ai","9":"tag-artificial-intelligence","10":"tag-computed-tomography","11":"tag-deep-learning","12":"tag-diseases","13":"tag-humanities-and-social-sciences","14":"tag-intracerebral-hemorrhage","15":"tag-machine-learning","16":"tag-medical-research","17":"tag-multidisciplinary","18":"tag-neurology","19":"tag-neuroscience","20":"tag-revised-hematoma-expansion","21":"tag-science","22":"tag-technology","23":"tag-united-states","24":"tag-unitedstates","25":"tag-us"},"share_on_mastodon":{"url":"https:\/\/pubeurope.com\/@us\/115125053271058970","error":""},"_links":{"self":[{"href":"https:\/\/www.europesays.com\/us\/wp-json\/wp\/v2\/posts\/189940","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/www.europesays.com\/us\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.europesays.com\/us\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.europesays.com\/us\/wp-json\/wp\/v2\/users\/3"}],"replies":[{"embeddable":true,"href":"https:\/\/www.europesays.com\/us\/wp-json\/wp\/v2\/comments?post=189940"}],"version-history":[{"count":0,"href":"https:\/\/www.europesays.com\/us\/wp-json\/wp\/v2\/posts\/189940\/revisions"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/www.europesays.com\/us\/wp-json\/wp\/v2\/media\/189941"}],"wp:attachment":[{"href":"https:\/\/www.europesays.com\/us\/wp-json\/wp\/v2\/media?parent=189940"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.europesays.com\/us\/wp-json\/wp\/v2\/categories?post=189940"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.europesays.com\/us\/wp-json\/wp\/v2\/tags?post=189940"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}