MS Pattern Explorer: interactive visual exploration of temporal activity patterns for multiple sclerosis.
This article describes the design and evaluation of MS Pattern Explorer, a novel visual tool that uses interactive machine learning to analyze fitness wearables' data. Applied to a clinical study of multiple sclerosis (MS) patients, the tool addresses key challenges: managing activity signals, accelerating insight generation, and rapidly contextualizing identified patterns. By analyzing sensor measurements, it aims to enhance understanding of MS symptomatology and improve the broader problem of clinical [...]
Author(s): Morgenshtern, Gabriela, Rutishauser, Yves, Haag, Christina, von Wyl, Viktor, Bernard, Jürgen
DOI: 10.1093/jamia/ocae230