Wiggins Walter F, Caton M Travis, Magudia Kirti, Glomski Sha-Har A, George Elizabeth, Rosenthal Michael H, Gaviola Glenn C, Andriole Katherine P
Department of Radiology, Brigham and Women's Hospital, Harvard Medical School, Boston, Mass (W.F.W., M.T.C., K.M., S.A.G., E.G., M.H.R., G.C.G., K.P.A.); and MGH & BWH Center for Clinical Data Science, Boston, Mass (W.F.W., M.T.C., K.M., K.P.A.).
Radiol Artif Intell. 2020 Nov 4;2(6):e200057. doi: 10.1148/ryai.2020200057. eCollection 2020 Nov.
Artificial intelligence and machine learning (AI-ML) have taken center stage in medical imaging. To develop as leaders in AI-ML, radiology residents may seek a formative data science experience. The authors piloted an elective Data Science Pathway (DSP) for 4th-year residents at the authors' institution in collaboration with the MGH & BWH Center for Clinical Data Science (CCDS). The goal of the DSP was to provide an introduction to AI-ML through a flexible schedule of educational, experiential, and research activities. The study describes the initial experience with the DSP tailored to the AI-ML interests of three senior radiology residents. The authors also discuss logistics and curricular design with common core elements and shared mentorship. Residents were provided dedicated, full-time immersion into the CCDS work environment. In the initial DSP pilot, residents were successfully integrated into AI-ML projects at CCDS. Residents were exposed to all aspects of AI-ML application development, including data curation, model design, quality control, and clinical testing. Core concepts in AI-ML were taught through didactic sessions and daily collaboration with data scientists and other staff. Work during the pilot period led to 12 accepted abstracts for presentation at national meetings. The DSP is a feasible, well-rounded introductory experience in AI-ML for senior radiology residents. Residents contributed to model and tool development at multiple stages and were academically productive. Feedback from the pilot resulted in establishment of a formal AI-ML curriculum for future residents. The described logistical, planning, and curricular considerations provide a framework for DSP implementation at other institutions. © RSNA, 2020.
人工智能和机器学习(AI-ML)在医学成像领域占据了核心地位。为了成为AI-ML领域的领军人物,放射科住院医师可能会寻求一段具有启发性的数据科学经历。作者与麻省总医院和布莱根妇女医院临床数据科学中心(CCDS)合作,为所在机构的四年级住院医师试点了一条选修的数据科学路径(DSP)。DSP的目标是通过灵活安排教育、实践和研究活动,对AI-ML进行介绍。该研究描述了根据三名资深放射科住院医师对AI-ML的兴趣量身定制的DSP的初步经验。作者还讨论了具有共同核心要素和共享指导的后勤和课程设计。住院医师被安排全职投入到CCDS的工作环境中。在最初的DSP试点中,住院医师成功融入了CCDS的AI-ML项目。住院医师接触到了AI-ML应用开发的各个方面,包括数据管理、模型设计、质量控制和临床试验。通过教学课程以及与数据科学家和其他工作人员的日常合作,教授了AI-ML的核心概念。试点期间的工作成果是12篇被接受在全国会议上展示的摘要。DSP对于资深放射科住院医师来说是一种可行的、全面的AI-ML入门体验。住院医师在多个阶段为模型和工具开发做出了贡献,并且在学术上富有成果。试点的反馈促使为未来的住院医师建立了正式的AI-ML课程。所描述的后勤、规划和课程考虑为其他机构实施DSP提供了一个框架。©RSNA,2020年。