Inside the “black box”: Embedding clinical knowledge in data-driven machine learning for heart disease diagnosis

IF 2.6 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS
James Meng MA, MB, BChir , Ruiming Xing MSc
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引用次数: 0

Abstract

Background

Ischemic heart disease (IHD) caused by the narrowing of coronary arteries is a major cause of morbidity and mortality worldwide. Clinical diagnosis involves complex, costly, and potentially invasive procedures.

Objective

To address this problem, we introduce a novel clinical knowledge-enhanced machine learning (ML) pipeline to assist in timely and cost-effective IHD prediction.

Methods

Unlike conventional data-driven “black box” ML approaches, we propose an effective mechanism to engage clinical expertise and gain insight into the “black box” at each stage of model development, including data analysis, preprocessing, selecting the most clinically discriminative features, and model evaluation. One-hot feature encoding is introduced to expose hidden bias and highlight the important elements and features.

Results

Experimental results on the benchmark Cleveland IHD dataset showed that the proposed clinical knowledge–enhanced ML pipeline overperformed state-of-the-art data-driven ML models, using even fewer features. Our model based on one-hot feature encoding and support vector machine achieved the best accuracy of 94.4% and sensitivity 95% by using only 7 discriminative attributes.

Conclusion

We share insights and discuss the effectiveness of incorporating clinical input in machine learning to improve model performance, as well as addressing some practical issues such as data bias and interpretability. We hope this preliminary study on engaging clinical expertise to explore the “black box” would improve the trustworthiness of AI and its potential wider uptake in the medical field.

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在“黑盒子”内部:将临床知识嵌入到数据驱动的机器学习中,用于心脏病诊断
由冠状动脉狭窄引起的非化学性心脏病(IHD)是世界范围内发病率和死亡率的主要原因。临床诊断涉及复杂、昂贵和潜在侵入性的程序。目的为了解决这一问题,我们引入了一种新的临床知识增强机器学习(ML)管道,以帮助及时和经济地预测IHD。方法与传统数据驱动的“黑箱”机器学习方法不同,我们提出了一种有效的机制,在模型开发的每个阶段(包括数据分析、预处理、选择最具临床区别性的特征和模型评估),利用临床专业知识并深入了解“黑箱”。引入单热特征编码来暴露隐藏的偏差,突出重要的元素和特征。结果在基准Cleveland IHD数据集上的实验结果表明,所提出的临床知识增强ML管道使用更少的特征,优于最先进的数据驱动ML模型。基于单热特征编码和支持向量机的模型仅使用7个判别属性,准确率达到94.4%,灵敏度达到95%。我们分享了见解,并讨论了将临床输入纳入机器学习以提高模型性能的有效性,以及解决一些实际问题,如数据偏差和可解释性。我们希望这项利用临床专家来探索“黑匣子”的初步研究能提高人工智能的可信度,并有望在医疗领域得到更广泛的应用。
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来源期刊
Cardiovascular digital health journal
Cardiovascular digital health journal Cardiology and Cardiovascular Medicine
CiteScore
4.20
自引率
0.00%
发文量
0
审稿时长
58 days
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