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深度学习在抑郁症治疗反应预测中的应用。

Deep learning for the prediction of treatment response in depression.

机构信息

Department of Pathophysiology and Transplantation and Department of Neurosciences and Mental Health, University of Milan, Milan, Italy.

Scientific Institute, IRCCS E. Medea, Developmental Psychopathology Unit, Bosisio Parini, Lecco, Italy.

出版信息

J Affect Disord. 2021 Feb 15;281:618-622. doi: 10.1016/j.jad.2020.11.104. Epub 2020 Nov 17.

Abstract

BACKGROUND

Mood disorders are characterized by heterogeneity in severity, symptoms and treatment response. The possibility of selecting the correct therapy on the basis of patient-specific biomarker may be a considerable step towards personalized psychiatry. Machine learning methods are gaining increasing popularity in the medical field. Once trained, the possibility to consider single patients in the analyses instead of whole groups makes them particularly appealing to investigate treatment response. Deep learning, a branch of machine learning, lately gained attention, due to its effectiveness in dealing with large neuroimaging data and to integrate them with clinical, molecular or -omics biomarkers.

METHODS

In this mini-review, we summarize studies that use deep learning methods to predict response to treatment in depression. We performed a bibliographic search on PUBMED, Google Scholar and Web of Science using the terms "psychiatry", "mood disorder", "depression", "treatment", "deep learning", "neural networks". Only studies considering patients' datasets are considered.

RESULTS

Eight studies met the inclusion criteria. Accuracies in prediction of response to therapy were considerably high in all studies, but results may be not easy to interpret.

LIMITATIONS

The major limitation for the current studies is the small sample size, which constitutes an issue for machine learning methods.

CONCLUSIONS

Deep learning shows promising results in terms of prediction of treatment response, often outperforming regression methods and reaching accuracies of around 80%. This could be of great help towards personalized medicine. However, more efforts are needed in terms of increasing datasets size and improved interpretability of results.

摘要

背景

心境障碍的严重程度、症状和治疗反应存在异质性。基于患者特异性生物标志物选择正确治疗方法的可能性,可能是迈向个性化精神病学的重要一步。机器学习方法在医学领域越来越受欢迎。一旦经过训练,就有可能在分析中考虑单个患者,而不是整个群体,这使得它们特别适合研究治疗反应。深度学习是机器学习的一个分支,由于其在处理大型神经影像学数据方面的有效性以及与临床、分子或组学生物标志物的整合能力,最近引起了关注。

方法

在本篇迷你综述中,我们总结了使用深度学习方法预测抑郁症治疗反应的研究。我们在 PUBMED、Google Scholar 和 Web of Science 上使用了“精神病学”、“心境障碍”、“抑郁症”、“治疗”、“深度学习”、“神经网络”等术语进行文献检索。仅考虑考虑患者数据集的研究。

结果

八项研究符合纳入标准。所有研究中治疗反应预测的准确率都相当高,但结果可能不容易解释。

局限性

目前研究的主要局限性是样本量小,这对机器学习方法构成了问题。

结论

深度学习在预测治疗反应方面显示出有前景的结果,通常优于回归方法,准确率达到 80%左右。这对于个性化医疗可能有很大帮助。然而,需要在增加数据集大小和提高结果的可解释性方面做出更多努力。

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