Chen Yutong, Rivier Cyprien A, Mora Samantha A, Torres Lopez Victor, Payabvash Sam, Sheth Kevin N, Harloff Andreas, Falcone Guido J, Rosand Jonathan, Mayerhofer Ernst, Anderson Christopher D
Center for Genomic Medicine, Massachusetts General Hospital, Boston, MA, USA.
Broad Institute of Harvard and MIT, Cambridge, MA, USA.
Eur Stroke J. 2025 Mar;10(1):225-235. doi: 10.1177/23969873241260154. Epub 2024 Jun 16.
Predicting functional impairment after intracerebral hemorrhage (ICH) provides valuable information for planning of patient care and rehabilitation strategies. Current prognostic tools are limited in making long term predictions and require multiple expert-defined inputs and interpretation that make their clinical implementation challenging. This study aimed to predict long term functional impairment of ICH patients from admission non-contrast CT scans, leveraging deep learning models in a survival analysis framework.
We used the admission non-contrast CT scans from 882 patients from the Massachusetts General Hospital ICH Study for training, hyperparameter optimization, and model selection, and 146 patients from the Yale New Haven ICH Study for external validation of a deep learning model predicting functional outcome. Disability (modified Rankin scale [mRS] > 2), severe disability (mRS > 4), and dependent living status were assessed via telephone interviews after 6, 12, and 24 months. The prediction methods were evaluated by the c-index and compared with ICH score and FUNC score.
Using non-contrast CT, our deep learning model achieved higher prediction accuracy of post-ICH dependent living, disability, and severe disability by 6, 12, and 24 months (c-index 0.742 [95% CI -0.700 to 0.778], 0.712 [95% CI -0.674 to 0.752], 0.779 [95% CI -0.733 to 0.832] respectively) compared with the ICH score (c-index 0.673 [95% CI -0.662 to 0.688], 0.647 [95% CI -0.637 to 0.661] and 0.697 [95% CI -0.675 to 0.717]) and FUNC score (c-index 0.701 [95% CI- 0.698 to 0.723], 0.668 [95% CI -0.657 to 0.680] and 0.727 [95% CI -0.708 to 0.753]). In the external independent Yale-ICH cohort, similar performance metrics were obtained for disability and severe disability (c-index 0.725 [95% CI -0.673 to 0.781] and 0.747 [95% CI -0.676 to 0.807], respectively). Similar AUC of predicting each outcome at 6 months, 1 and 2 years after ICH was achieved compared with ICH score and FUNC score.
We developed a generalizable deep learning model to predict onset of dependent living and disability after ICH, which could help to guide treatment decisions, advise relatives in the acute setting, optimize rehabilitation strategies, and anticipate long-term care needs.
预测脑出血(ICH)后的功能障碍可为患者护理和康复策略的规划提供有价值的信息。目前的预后工具在进行长期预测方面存在局限性,需要多个专家定义的输入和解读,这使得它们在临床应用中具有挑战性。本研究旨在利用生存分析框架中的深度学习模型,从入院时的非增强CT扫描预测ICH患者的长期功能障碍。
我们使用了来自麻省总医院ICH研究的882例患者的入院非增强CT扫描进行训练、超参数优化和模型选择,并使用来自耶鲁纽黑文ICH研究的146例患者对预测功能结局的深度学习模型进行外部验证。在6、12和24个月后通过电话访谈评估残疾情况(改良Rankin量表[mRS]>2)、严重残疾情况(mRS>4)和依赖生活状态。通过c指数评估预测方法,并与ICH评分和FUNC评分进行比较。
使用非增强CT,我们的深度学习模型在预测ICH后6、12和24个月的依赖生活、残疾和严重残疾方面具有更高的预测准确性(c指数分别为0.742[95%CI-0.700至0.778]、0.712[95%CI-0.674至0.752]、0.779[95%CI-0.733至0.832]),相比之下ICH评分的c指数为0.673[95%CI-0.662至0.688]、0.647[95%CI-0.637至0.661]和0.697[95%CI-0.675至0.717],FUNC评分的c指数为0.701[95%CI-0.698至0.723]、0.668[95%CI-0.657至0.680]和0.727[95%CI-0.708至0.753]。在外部独立的耶鲁-ICH队列中,残疾和严重残疾获得了相似的性能指标(c指数分别为0.725[95%CI-0.673至0.781]和0.747[95%CI-0.676至0.807])。与ICH评分和FUNC评分相比,在ICH后6个月、1年和2年预测各结局的AUC相似。
我们开发了一种可推广的深度学习模型来预测ICH后依赖生活和残疾的发生,这有助于指导治疗决策、在急性期为亲属提供建议、优化康复策略并预测长期护理需求。