AI will not give us precision medicine.

Lorenzo Farina
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Abstract

The completion of human DNA sequencing in the early 2000s initially generated widespread excitement and hope that it would revolutionize medicine. Over time, however, it revealed major limitations due to a lack of understanding of the highly complex genotype-phenotype pathway. Precision medicine has emerged as a response to these biotechnological innovations, tailoring treatments based on an array of new molecular and clinical "omics" data. However, the large volume and heterogeneity of data available today requires the use of dedicated and highly efficient computational analyses. Widely used today are artificial intelligence techniques (such as machine learning) based on artificial neural networks, i.e., a mathematical model of how biological neurons work. Here, we show that artificial neural networks have nothing to do with biology, although their popularity is largely due to their alleged ability to simulate the human brain. Furthermore, we argue that the analysis of large molecular datasets cannot be left to the computational side alone, i.e., to be exclusively data-driven, but on the contrary must meet the challenge of integrating data and expertise, of getting clinicians and data analysts to work together to take into account the absolute and ineradicable uniqueness of each patient's characteristics.

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人工智能不会给我们带来精准医疗。
人类 DNA 测序工作于 2000 年代初完成,最初引起了广泛的关注,人们希望它能彻底改变医学。然而,随着时间的推移,由于缺乏对高度复杂的基因型-表型途径的了解,它暴露出了很大的局限性。作为对这些生物技术创新的回应,精准医疗应运而生,它根据一系列新的分子和临床 "omics "数据来定制治疗方案。然而,目前可用的数据量大、异质性强,需要使用专用的高效计算分析。目前广泛使用的人工智能技术(如机器学习)基于人工神经网络,即生物神经元如何工作的数学模型。在这里,我们要说明的是,人工神经网络与生物学毫无关系,尽管它们的流行在很大程度上是因为它们据称能够模拟人脑。此外,我们还认为,对大型分子数据集的分析不能只由计算一方来完成,即不能完全由数据驱动,相反,必须迎接将数据与专业知识相结合的挑战,让临床医生和数据分析师共同努力,考虑到每位患者的绝对和不可改变的独特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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