For a critical appraisal of artificial intelligence in healthcare: The problem of bias in mHealth

被引:17
作者
Brault, Nicolas [1 ]
Saxena, Mohit [2 ]
机构
[1] UniLaSalle, Interact UP 2018 C102, Nicolas Brault, Beauvais, France
[2] SupBiotech Paris, Mohit Saxena, Villejuif, France
关键词
artificial intelligence; bias; big data; evidence‐ based medicine; mHealth; philosophy of medicine;
D O I
10.1111/jep.13528
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Rationale, aims and objectives Artificial intelligence and big data are more and more used in medicine, either in prevention, diagnosis or treatment, and are clearly modifying the way medicine is thought and practiced. Some authors argue that the use of artificial intelligence techniques to analyze big data would even constitute a scientific revolution, in medicine as much as in other scientific disciplines. Moreover, artificial intelligence techniques, coupled with mobile health technologies, could furnish a personalized medicine, adapted to the individuality of each patient. In this paper we argue that this conception is largely a myth: what health professionals and patients need is not more data, but data that are critically appraised, especially to avoid bias. Methods In this historical and conceptual article, we focus on two main problems: first, the data and the problem of its validity; second, the inference drawn from the data by AI, and the establishment of correlations through the use of algorithms. We use examples from the contemporary use of mobile health (mHealth), i.e. the practice of medicine and public health supported by mobile or wearable devices such as mobile phones or smart watches. Results We show that the validity of the data and of the inferences drawn from these mHealth data are likely to be biased. As biases are insensitive to the size of the sample, even if the sample is the whole population, artificial intelligence and big data cannot avoid biases and even tend to increase them. Conclusions The large amount of data thus appears rather as a problem than a solution. What contemporary medicine needs is not more data or more algorithms, but a critical appraisal of the data and of the analysis of the data. Considering the history of epidemiology, we propose three research priorities concerning the use of artificial intelligence and big data in medicine.
引用
收藏
页码:513 / 519
页数:7
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