Yimenu Taddesse Kassu, Adege Abebe Belay, Techan Sofonias Yitagesu
Department of Computer Science, Debre Berhan University, Debre Berhan, Ethiopia.
Department of Information Technology, Debre Markos University, Debre Markos, Ethiopia.
Digit Health. 2025 Apr 29;11:20552076251336853. doi: 10.1177/20552076251336853. eCollection 2025 Jan-Dec.
Stroke is a leading cause of mortality and disability worldwide, requiring early detection and timely intervention to improve patient outcomes. However, in resource-limited locations, the lack of specialists often leads to delayed and inaccurate diagnoses. To address this, we propose an AI-driven stroke identification and treatment system that integrates expert knowledge with machine learning, enabling healthcare providers to make informed decisions without direct specialist input. The data for this study were obtained from Debre Berhan Referral Hospital through expert interviews, prescriptions, and from a public dataset in the Kaggle platform. Feature selection was performed using decision trees, Chi-Square tests, Elastic Net coefficients, and correlation analysis. Additionally, we applied to Shapley Additive Explanations to demonstrate the feasibility of feature selection in AI model development. Machine learning models, including Decision Tree, Random Forest, and Support Vector Machine, were evaluated, and Random Forest classifier achieved the highest accuracy of 99.4% using k-fold cross-validation technique. Expert knowledge was encoded in Prolog, while machine learning models were implemented in Python to develop a hybrid expert system. Medical professionals evaluated the system, confirming its effectiveness as a decision-support tool for stroke diagnosis and treatment. This approach demonstrates the potential of AI-driven expert systems to enhance stroke management, particularly in regions with limited access to specialized care.
中风是全球死亡和残疾的主要原因,需要早期检测和及时干预以改善患者预后。然而,在资源有限的地区,缺乏专家往往导致诊断延迟和不准确。为了解决这一问题,我们提出了一种人工智能驱动的中风识别和治疗系统,该系统将专家知识与机器学习相结合,使医疗保健提供者无需专家直接参与即可做出明智的决策。本研究的数据通过专家访谈、处方从德布雷伯尔汉转诊医院获得,并从Kaggle平台的一个公共数据集中获取。使用决策树、卡方检验、弹性网系数和相关分析进行特征选择。此外,我们应用了夏普利加性解释来证明特征选择在人工智能模型开发中的可行性。对包括决策树、随机森林和支持向量机在内的机器学习模型进行了评估,随机森林分类器使用k折交叉验证技术达到了99.4%的最高准确率。专家知识用Prolog编码,而机器学习模型用Python实现,以开发一个混合专家系统。医学专业人员对该系统进行了评估,证实了其作为中风诊断和治疗决策支持工具的有效性。这种方法展示了人工智能驱动的专家系统在加强中风管理方面的潜力,特别是在获得专科护理机会有限的地区。