作者
Radwa Elshawi, Mouaz H Al-Mallah, Sherif Sakr
发表日期
2019/12
期刊
BMC medical informatics and decision making
卷号
19
页码范围
1-32
出版商
BioMed Central
简介
Background
Although complex machine learning models are commonly outperforming the traditional simple interpretable models, clinicians find it hard to understand and trust these complex models due to the lack of intuition and explanation of their predictions. The aim of this study to demonstrate the utility of various model-agnostic explanation techniques of machine learning models with a case study for analyzing the outcomes of the machine learning random forest model for predicting the individuals at risk of developing hypertension based on cardiorespiratory fitness data.
Methods
The dataset used in this study contains information of 23,095 patients who underwent clinician-referred exercise treadmill stress testing at Henry Ford Health Systems between 1991 and 2009 and had a complete 10-year follow-up. Five global interpretability techniques …
引用总数
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