论文标题
通过可视化学习和深度学习,情感医学估计和决策
Affective Medical Estimation and Decision Making via Visualized Learning and Deep Learning
论文作者
论文摘要
随着复杂的机器学习(ML)技术的出现,以及它们产生的有希望的结果,尤其是在医疗应用中,已对它们进行了研究以提高决策过程的不同任务。由于可视化是人类理解,记忆和判断的一种有效工具,因此我们提出了一种首先说明的估计方法,我们称为可视化的机器学习学习(VL4ML)(VL4ML),不仅可以帮助医师和临床医生做出合理的医疗决策,而且还可以允许不确定的可视化或估算不确定的分类或估算不确定的分类或预测。为了获得概念证明,并证明了这种可视化估计方法的普遍性质,研究了五个不同类型的任务,包括分类,回归和纵向预测。还进行了100多名个人的调查分析,以评估用户对这种可视化估计方法的反馈。实验和调查证明了VL4ML的实际优点,其中包括:(1)欣赏视觉上的临床/医疗估计; (2)越来越接近患者的偏好; (3)改善医生的沟通,(4)通过部署的ML算法的黑匣子效应引入的不确定性可视化。所有源代码均通过GITHUB存储库共享。
With the advent of sophisticated machine learning (ML) techniques and the promising results they yield, especially in medical applications, where they have been investigated for different tasks to enhance the decision-making process. Since visualization is such an effective tool for human comprehension, memorization, and judgment, we have presented a first-of-its-kind estimation approach we refer to as Visualized Learning for Machine Learning (VL4ML) that not only can serve to assist physicians and clinicians in making reasoned medical decisions, but it also allows to appreciate the uncertainty visualization, which could raise incertitude in making the appropriate classification or prediction. For the proof of concept, and to demonstrate the generalized nature of this visualized estimation approach, five different case studies are examined for different types of tasks including classification, regression, and longitudinal prediction. A survey analysis with more than 100 individuals is also conducted to assess users' feedback on this visualized estimation method. The experiments and the survey demonstrate the practical merits of the VL4ML that include: (1) appreciating visually clinical/medical estimations; (2) getting closer to the patients' preferences; (3) improving doctor-patient communication, and (4) visualizing the uncertainty introduced through the black box effect of the deployed ML algorithm. All the source codes are shared via a GitHub repository.