Berlin Institute of Technology, Department of Computer Science, Berlin, Germany.
Neuroimage. 2011 May 15;56(2):387-99. doi: 10.1016/j.neuroimage.2010.11.004. Epub 2010 Dec 21.
Machine learning and pattern recognition algorithms have in the past years developed to become a working horse in brain imaging and the computational neurosciences, as they are instrumental for mining vast amounts of neural data of ever increasing measurement precision and detecting minuscule signals from an overwhelming noise floor. They provide the means to decode and characterize task relevant brain states and to distinguish them from non-informative brain signals. While undoubtedly this machinery has helped to gain novel biological insights, it also holds the danger of potential unintentional abuse. Ideally machine learning techniques should be usable for any non-expert, however, unfortunately they are typically not. Overfitting and other pitfalls may occur and lead to spurious and nonsensical interpretation. The goal of this review is therefore to provide an accessible and clear introduction to the strengths and also the inherent dangers of machine learning usage in the neurosciences.
机器学习和模式识别算法在过去几年中已经发展成为脑成像和计算神经科学的得力工具,因为它们可以挖掘大量不断提高测量精度的神经数据,并从压倒性的噪声背景中检测出微小的信号。它们提供了解码和描述与任务相关的大脑状态的手段,并将其与无信息的大脑信号区分开来。虽然毫无疑问,这种机制有助于获得新的生物学见解,但它也存在潜在的无意滥用的危险。理想情况下,机器学习技术应该可供任何非专业人士使用,然而,不幸的是,它们通常并非如此。过度拟合和其他陷阱可能会出现,并导致虚假和荒谬的解释。因此,本综述的目的是提供一个易于理解和清晰的介绍,说明机器学习在神经科学中的使用的优势和内在危险。