Center on Smart and Connected Health Technologies, Mays Cancer Center, School of Nursing, UT Health San Antonio, San Antonio, Texas, USA.
Department of Radiation Oncology, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
BMJ Open. 2021 Nov 11;11(11):e047549. doi: 10.1136/bmjopen-2020-047549.
Deep learning techniques are gaining momentum in medical research. Evidence shows that deep learning has advantages over humans in image identification and classification, such as facial image analysis in detecting people's medical conditions. While positive findings are available, little is known about the state-of-the-art of deep learning-based facial image analysis in the medical context. For the consideration of patients' welfare and the development of the practice, a timely understanding of the challenges and opportunities faced by research on deep-learning-based facial image analysis is needed. To address this gap, we aim to conduct a systematic review to identify the characteristics and effects of deep learning-based facial image analysis in medical research. Insights gained from this systematic review will provide a much-needed understanding of the characteristics, challenges, as well as opportunities in deep learning-based facial image analysis applied in the contexts of disease detection, diagnosis and prognosis.
Databases including PubMed, PsycINFO, CINAHL, IEEEXplore and Scopus will be searched for relevant studies published in English in September, 2021. Titles, abstracts and full-text articles will be screened to identify eligible articles. A manual search of the reference lists of the included articles will also be conducted. The Preferred Reporting Items for Systematic Reviews and Meta-Analyses framework was adopted to guide the systematic review process. Two reviewers will independently examine the citations and select studies for inclusion. Discrepancies will be resolved by group discussions till a consensus is reached. Data will be extracted based on the research objective and selection criteria adopted in this study.
As the study is a protocol for a systematic review, ethical approval is not required. The study findings will be disseminated via peer-reviewed publications and conference presentations.
CRD42020196473.
深度学习技术在医学研究中日益受到关注。有证据表明,深度学习在图像识别和分类方面优于人类,例如通过面部图像分析来检测人们的健康状况。虽然已经有了一些积极的发现,但对于医学背景下基于深度学习的面部图像分析的最新技术状态知之甚少。考虑到患者的福利和实践的发展,需要及时了解基于深度学习的面部图像分析研究所面临的挑战和机遇。为了填补这一空白,我们旨在进行一项系统评价,以确定医学研究中基于深度学习的面部图像分析的特点和效果。从这项系统评价中获得的见解将为理解基于深度学习的面部图像分析在疾病检测、诊断和预后等方面的特点、挑战和机遇提供急需的认识。
我们将在 2021 年 9 月检索包括 PubMed、PsycINFO、CINAHL、IEEEXplore 和 Scopus 在内的数据库,以查找发表在英文期刊上的相关研究。将筛选标题、摘要和全文文章,以确定符合条件的文章。还将对纳入文章的参考文献进行手动搜索。将采用系统评价和荟萃分析的首选报告项目框架来指导系统评价过程。两名评审员将独立检查引用并选择纳入的研究。如有分歧,将通过小组讨论解决,直到达成共识。将根据本研究的研究目标和选择标准提取数据。
由于该研究是系统评价的方案,因此不需要伦理批准。研究结果将通过同行评审出版物和会议报告进行传播。
PROSPERO 注册号:CRD42020196473。