Oei Chien Wei, Ng Eddie Yin Kwee, Ng Matthew Hok Shan, Chan Yam Meng, Subbhuraam Vinithasree, Chan Lai Gwen, Acharya U Rajendra
Management Information Department, Office of Clinical Epidemiology, Analytics and kNowledge (OCEAN), Tan Tock Seng Hospital, Singapore 308433, Singapore.
School of Mechanical and Aerospace Engineering, Nanyang Technological University, Singapore 639798, Singapore.
Bioengineering (Basel). 2025 May 14;12(5):517. doi: 10.3390/bioengineering12050517.
Depression and anxiety are common comorbidities of stroke. Research has shown that about 30% of stroke survivors develop depression and about 20% develop anxiety. Stroke survivors with such adverse mental outcomes are often attributed to poorer health outcomes, such as higher mortality rates. The objective of this study is to use deep learning (DL) methods to predict the risk of a stroke survivor experiencing post-stroke depression and/or post-stroke anxiety, which is collectively known as post-stroke adverse mental outcomes (PSAMO). This study studied 179 patients with stroke, who were further classified into PSAMO versus no PSAMO group based on the results of validated depression and anxiety questionnaires, which are the industry's gold standard. This study collected demographic and sociological data, quality of life scores, stroke-related information, medical and medication history, and comorbidities. In addition, sequential data such as daily lab results taken seven consecutive days after admission are also collected. The combination of using DL algorithms, such as multi-layer perceptron (MLP) and long short-term memory (LSTM), which can process complex patterns in the data, and the inclusion of new data types, such as sequential data, helped to improve model performance. Accurate prediction of PSAMO helps clinicians make early intervention care plans and potentially reduce the incidence of PSAMO.
抑郁症和焦虑症是中风常见的共病。研究表明,约30%的中风幸存者会患上抑郁症,约20%会患上焦虑症。有这些不良心理结果的中风幸存者往往健康状况较差,比如死亡率较高。本研究的目的是使用深度学习(DL)方法来预测中风幸存者发生中风后抑郁症和/或中风后焦虑症的风险,这统称为中风后不良心理结果(PSAMO)。本研究对179名中风患者进行了研究,根据经过验证的抑郁症和焦虑症问卷结果(这是该行业的金标准),将他们进一步分为PSAMO组和无PSAMO组。本研究收集了人口统计学和社会学数据、生活质量评分、中风相关信息、医疗和用药史以及共病情况。此外,还收集了入院后连续七天的每日实验室检查结果等序列数据。使用多层感知器(MLP)和长短期记忆网络(LSTM)等能够处理数据中复杂模式的DL算法,以及纳入序列数据等新数据类型,有助于提高模型性能。准确预测PSAMO有助于临床医生制定早期干预护理计划,并有可能降低PSAMO的发生率。