Automated Stroke Prediction Using Machine Learning: An Explainable and Exploratory Study With a Web Application for Early Intervention

被引:12
|
作者
Mridha, Krishna [1 ]
Ghimire, Sandesh [1 ]
Shin, Jungpil [2 ]
Aran, Anmol [1 ]
Uddin, Md. Mezbah [1 ]
Mridha, M. F. [3 ]
机构
[1] Marwadi Univ, Dept Comp Engn, Rajkot 360003, India
[2] Univ Aizu, Dept Comp Sci & Engn, Aizu Wakamatsu 9658580, Japan
[3] Amer Int Univ Bangladesh, Dept Comp Sci, Dhaka 1229, Bangladesh
关键词
Stroke (medical condition); Machine learning; Predictive models; Prediction algorithms; Machine learning algorithms; Medical services; Medical diagnostic imaging; Stroke prediction; data leakage; explainable machine learning; ANOVA test; SHAPE; LIME;
D O I
10.1109/ACCESS.2023.3278273
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Stroke is a dangerous medical disorder that occurs when blood flow to the brain is disrupted, resulting in neurological impairment. It is a big worldwide threat with serious health and economic implications. To solve this, researchers are developing automated stroke prediction algorithms, which would allow for early intervention and perhaps save lives. The number of people at risk for stroke is growing as the population ages, making precise and effective prediction systems increasingly critical. wo In a comparison examination with six well-known classifiers, the effectiveness of the proposed ML technique was explored in terms of metrics relating to both generalization capability and prediction accuracy. To give insight into the black-box machine learning models, we also studied two kinds of explainable techniques, namely SHAP and LIME, in this study. SHAP (Shapley Additive Explanations) and LIME (Local Interpretable Model-agnostic Explanations) are well-established and reliable approaches for explaining model decision-making, particularly in the medical industry. The findings of the experiment revealed that more complicated models outperformed simpler ones, with the top model obtaining almost 91% accuracy and the other models achieving 83-91% accuracy. The proposed framework, which includes global and local explainable methodologies, can aid in standardizing complicated models and gaining insight into their decision-making, which can enhance stroke care and treatment.
引用
收藏
页码:52288 / 52308
页数:21
相关论文
共 50 条
  • [41] Explainable machine learning for labquake prediction using catalog-driven features
    Karimpouli, Sadegh
    Caus, Danu
    Grover, Harsh
    Martinez-Garzon, Patricia
    Bohnhoff, Marco
    Beroza, Gregory C.
    Dresen, Georg
    Goebel, Thomas
    Weigel, Tobias
    Kwiatek, Grzegorz
    EARTH AND PLANETARY SCIENCE LETTERS, 2023, 622
  • [42] A Standard Baseline for Software Defect Prediction: Using Machine Learning and Explainable AI
    Bommi, Nitin Sai
    Negi, Atul
    2023 IEEE 47TH ANNUAL COMPUTERS, SOFTWARE, AND APPLICATIONS CONFERENCE, COMPSAC, 2023, : 1798 - 1803
  • [43] Automatic COVID-19 prediction using explainable machine learning techniques
    Solayman S.
    Aumi S.A.
    Mery C.S.
    Mubassir M.
    Khan R.
    International Journal of Cognitive Computing in Engineering, 2023, 4 : 36 - 46
  • [44] Prediction of Students' Adaptability Using Explainable AI in Educational Machine Learning Models
    Nnadi, Leonard Chukwualuka
    Watanobe, Yutaka
    Rahman, Md. Mostafizer
    John-Otumu, Adetokunbo Macgregor
    APPLIED SCIENCES-BASEL, 2024, 14 (12):
  • [45] Prediction of hydrogen uptake of metal organic frameworks using explainable machine learning
    Meduri, Sitaram
    Nandanavanam, Jalaiah
    ENERGY AND AI, 2023, 12
  • [46] Supporting Students' Academic Performance Using Explainable Machine Learning with Automated Prescriptive Analytics
    Ramaswami, Gomathy
    Susnjak, Teo
    Mathrani, Anuradha
    BIG DATA AND COGNITIVE COMPUTING, 2022, 6 (04)
  • [47] Automated Machine Learning for the Early Prediction of the Severity of Acute Pancreatitis in Hospitals
    Yin, Minyue
    Zhang, Rufa
    Zhou, Zhirun
    Liu, Lu
    Gao, Jingwen
    Xu, Wei
    Yu, Chenyan
    Lin, Jiaxi
    Liu, Xiaolin
    Xu, Chunfang
    Zhu, Jinzhou
    FRONTIERS IN CELLULAR AND INFECTION MICROBIOLOGY, 2022, 12
  • [48] In silico prediction of ocular toxicity of compounds using explainable machine learning and deep learning approaches
    Zhou, Yiqing
    Wang, Ze
    Huang, Zejun
    Li, Weihua
    Chen, Yuanting
    Yu, Xinxin
    Tang, Yun
    Liu, Guixia
    JOURNAL OF APPLIED TOXICOLOGY, 2024, 44 (06) : 892 - 907
  • [49] Early Prediction of Cardiac Arrest in the Intensive CareUnit Using Explainable Machine Learning:Retrospective Study (vol 26, e67135, 2024)
    Kim, Yun Kwan
    Seo, Won-Doo
    Lee, Sun Jung
    Koo, Ja Hyung
    Kim, Gyung Chul
    Song, Hee Seok
    Lee, Minji
    JOURNAL OF MEDICAL INTERNET RESEARCH, 2024, 26
  • [50] Explainable machine learning for 2D material layer group prediction with automated descriptor selection
    Sun, Ruijia
    Tang, Bijun
    Liu, Zheng
    MATERIALS TODAY CHEMISTRY, 2025, 44