Badrulhisham Fakhirah, Pogatzki-Zahn Esther, Segelcke Daniel, Spisak Tamas, Vollert Jan
Royal Devon and Exeter Hospital NHS Trust, Exeter, United Kingdom.
Department of Anaesthesiology, Intensive Care and Pain Medicine, University Hospital Muenster, Muenster, Germany.
Brain Behav Immun. 2024 Jan;115:470-479. doi: 10.1016/j.bbi.2023.11.005. Epub 2023 Nov 14.
Artificial intelligence (AI) is often used to describe the automation of complex tasks that we would attribute intelligence to. Machine learning (ML) is commonly understood as a set of methods used to develop an AI. Both have seen a recent boom in usage, both in scientific and commercial fields. For the scientific community, ML can solve bottle necks created by complex, multi-dimensional data generated, for example, by functional brain imaging or *omics approaches. ML can here identify patterns that could not have been found using traditional statistic approaches. However, ML comes with serious limitations that need to be kept in mind: their tendency to optimise solutions for the input data means it is of crucial importance to externally validate any findings before considering them more than a hypothesis. Their black-box nature implies that their decisions usually cannot be understood, which renders their use in medical decision making problematic and can lead to ethical issues. Here, we present an introduction for the curious to the field of ML/AI. We explain the principles as commonly used methods as well as recent methodological advancements before we discuss risks and what we see as future directions of the field. Finally, we show practical examples of neuroscience to illustrate the use and limitations of ML.
人工智能(AI)通常用于描述我们认为具有智能的复杂任务的自动化。机器学习(ML)通常被理解为用于开发人工智能的一组方法。最近,它们在科学和商业领域的应用都出现了热潮。对于科学界来说,机器学习可以解决由复杂的多维数据产生的瓶颈问题,例如,由功能性脑成像或组学方法产生的数据。在这里,机器学习可以识别使用传统统计方法无法发现的模式。然而,机器学习存在一些严重的局限性,需要牢记:它们倾向于针对输入数据优化解决方案,这意味着在将任何发现视为不仅仅是一个假设之前,从外部验证这些发现至关重要。它们的黑箱性质意味着它们的决策通常无法被理解,这使得它们在医疗决策中的应用存在问题,并可能导致伦理问题。在这里,我们为好奇的人介绍机器学习/人工智能领域。在讨论风险以及我们认为该领域的未来方向之前,我们先解释常用方法的原理以及最近的方法学进展。最后,我们展示神经科学的实际例子来说明机器学习的用途和局限性。