Affective Medical Estimation and Decision Making via Visualized Learning and Deep Learning
Mohammad Eslami, Solale Tabarestani, Ehsan Adeli, Glyn Elwyn, Tobias, Elze, Mengyu Wang, Nazlee Zebardast, Nassir Navab, Malek Adjouadi

TL;DR
This paper introduces VL4ML, a visualization-based machine learning approach that aids medical decision-making by making predictions and uncertainties more interpretable for clinicians and patients.
Contribution
It presents a novel visualization technique for ML in medicine, enhancing understanding, communication, and uncertainty appreciation in clinical predictions.
Findings
Improves clinician understanding of ML estimations
Enhances doctor-patient communication
Visualizes uncertainty in predictions
Abstract
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…
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Taxonomy
TopicsData Visualization and Analytics · Machine Learning in Healthcare · AI in cancer detection
