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基于可解释机器学习算法和心电图特征的个性化医疗决策支持系统:来自真实世界的数据。

A Personalized Medical Decision Support System Based on Explainable Machine Learning Algorithms and ECC Features: Data from the Real World.

作者信息

Gu Dongxiao, Zhao Wang, Xie Yi, Wang Xiaoyu, Su Kaixiang, Zolotarev Oleg V

机构信息

The School of Management, Hefei University of Technology, Hefei 230009, China.

Key Laboratory of Process Optimization and Intelligent Decision-Making of Ministry of Education, Hefei 230009, China.

出版信息

Diagnostics (Basel). 2021 Sep 14;11(9):1677. doi: 10.3390/diagnostics11091677.

Abstract

Artificial intelligence can help physicians improve the accuracy of breast cancer diagnosis. However, the effectiveness of AI applications is limited by doctors' adoption of the results recommended by the personalized medical decision support system. Our primary purpose is to study the impact of external case characteristics (ECC) on the effectiveness of the personalized medical decision support system for breast cancer assisted diagnosis (PMDSS-BCAD) in making accurate recommendations. Therefore, we designed a novel comprehensive framework for case-based reasoning (CBR) that takes the impact of external features of cases into account, made use of the naive Bayes and k-nearest neighbor (KNN) algorithms (CBR-ECC), and developed a PMDSS-BCAD system by using the CBR-ECC model and external features as system components. Under the new case-based reasoning framework, the accuracy of the combined model of naive Bayes and KNN with an optimal K value of 2 is 99.40%. Moreover, in a real hospital scenario, users rated the PMDSS-BCAD system, which takes into account the external characteristics of the case, better than the original personalized system. These results suggest that PMDSS-BCD can not only provide doctors with more personalized and accurate results for auxiliary diagnosis, but also improve doctors' trust in the results, so as to encourage doctors to adopt the results recommended by the personalized system.

摘要

人工智能可以帮助医生提高乳腺癌诊断的准确性。然而,人工智能应用的有效性受到医生对个性化医疗决策支持系统推荐结果的采纳情况的限制。我们的主要目的是研究外部病例特征(ECC)对用于乳腺癌辅助诊断的个性化医疗决策支持系统(PMDSS-BCAD)做出准确推荐的有效性的影响。因此,我们设计了一种新颖的基于案例推理(CBR)的综合框架,该框架考虑了病例外部特征的影响,利用朴素贝叶斯和k近邻(KNN)算法(CBR-ECC),并通过使用CBR-ECC模型和外部特征作为系统组件开发了一个PMDSS-BCAD系统。在新的基于案例推理框架下,朴素贝叶斯和KNN组合模型在最优K值为2时的准确率为99.40%。此外,在真实医院场景中,用户对考虑了病例外部特征的PMDSS-BCAD系统的评价高于原始的个性化系统。这些结果表明,PMDSS-BCD不仅可以为医生提供更个性化、准确的辅助诊断结果,还可以提高医生对结果的信任度,从而鼓励医生采纳个性化系统推荐的结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b6b6/8471808/aa73d7dc225a/diagnostics-11-01677-g001.jpg

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