Smrke Urška, Mlakar Izidor, Lin Simon, Musil Bojan, Plohl Nejc
Faculty of Electrical Engineering and Computer Science, University of Maribor, Maribor, Slovenia.
Science Department, Symptoma, Vienna, Austria.
JMIR Ment Health. 2021 Dec 6;8(12):e30439. doi: 10.2196/30439.
Cancer survivors often experience disorders from the depressive spectrum that remain largely unrecognized and overlooked. Even though screening for depression is recognized as essential, several barriers prevent its successful implementation. It is possible that better screening options can be developed. New possibilities have been opening up with advances in artificial intelligence and increasing knowledge on the connection of observable cues and psychological states.
The aim of this scoping meta-review was to identify observable features of depression that can be intercepted using artificial intelligence in order to provide a stepping stone toward better recognition of depression among cancer survivors.
We followed a methodological framework for scoping reviews. We searched SCOPUS and Web of Science for relevant papers on the topic, and data were extracted from the papers that met inclusion criteria. We used thematic analysis within 3 predefined categories of depression cues (ie, language, speech, and facial expression cues) to analyze the papers.
The search yielded 1023 papers, of which 9 met the inclusion criteria. Analysis of their findings resulted in several well-supported cues of depression in language, speech, and facial expression domains, which provides a comprehensive list of observable features that are potentially suited to be intercepted by artificial intelligence for early detection of depression.
This review provides a synthesis of behavioral features of depression while translating this knowledge into the context of artificial intelligence-supported screening for depression in cancer survivors.
癌症幸存者常常经历抑郁谱系障碍,而这些障碍在很大程度上未被识别和忽视。尽管抑郁症筛查被认为至关重要,但仍有几个障碍阻碍其成功实施。有可能开发出更好的筛查方法。随着人工智能的进步以及对可观察线索与心理状态之间联系的认识不断增加,新的可能性不断涌现。
本范围综述的目的是确定可通过人工智能识别的抑郁症可观察特征,以便为更好地识别癌症幸存者中的抑郁症提供一个垫脚石。
我们遵循范围综述的方法框架。我们在Scopus和Web of Science中搜索有关该主题的相关论文,并从符合纳入标准的论文中提取数据。我们在抑郁症线索的3个预定义类别(即语言、言语和面部表情线索)内使用主题分析来分析这些论文。
搜索产生了1023篇论文,其中9篇符合纳入标准。对其研究结果的分析得出了语言、言语和面部表情领域中几个有充分支持的抑郁症线索,这提供了一份可观察特征的综合清单,这些特征可能适合通过人工智能进行拦截以早期检测抑郁症。
本综述综合了抑郁症的行为特征,同时将这些知识转化为在人工智能支持下对癌症幸存者进行抑郁症筛查的背景中。