Fully automatic deep learning has become the state-of-the-art technique for many tasks including image acquisition, analysis and interpretation, and for the extraction of clinically useful information for computer-aided detection, diagnosis, treatment planning, intervention and therapy. However, the unique challenges posed by medical image analysis suggest that retaining a human end user in any deep learning enabled system will be beneficial. In this review we investigate the role that humans might play in the development and deployment of deep learning enabled diagnostic applications and focus on techniques that will retain a significant input from a human end user. Human-in-the-Loop computing is an area that we see as increasingly important in future research due to the safety-critical nature of working in the medical domain. We evaluate four key areas that we consider vital for deep learning in the clinical practice: (1) Active Learning to choose the best data to annotate for optimal model performance; (2) Interaction with model outputs - using iterative feedback to steer models to optima for a given prediction and offering meaningful ways to interpret and respond to predictions; (3) Practical considerations - developing full scale applications and the key considerations that need to be made before deployment; (4) Future Prospective and Unanswered Questions - knowledge gaps and related research fields that will benefit human-in-the-loop computing as they evolve. We offer our opinions on the most promising directions of research and how various aspects of each area might be unified towards common goals.
翻译:完全自动深层学习已成为许多任务的最先进技术,包括图像获取、分析和解读,以及提取临床有用信息用于计算机辅助检测、诊断、诊断、治疗规划、干预和治疗,然而,医学图像分析所构成的独特挑战表明,在任何深层学习促成的系统中保留人类终端用户将是有益的;在本次审查中,我们调查人类在开发和部署深层学习促成的诊断应用中可能发挥的作用,并侧重于将保留人类终端用户重要投入的技术。 人类在线计算是我们认为未来研究中日益重要的一个领域,因为医学领域工作的安全至关重要。我们评估了我们认为对临床实践深层学习至关重要的四个关键领域:(1) 积极学习,选择最佳数据,说明最佳模型性性能;(2) 与模型产出的互动----利用互动反馈引导模型对给定的预测进行选择,并提供解释和应对预测的有益方法。(3) 实际考虑----开发全面规模应用,以及在部署之前需要提出的关键考虑因素。