HealthPrism: A Visual Analytics System for Exploring Children's Physical and Mental Health Profiles with Multimodal Data
The correlation between children's personal and family characteristics (e.g., demographics and socioeconomic status) and their physical and mental health status has been extensively studied across various research domains, such as public health, medicine, and data science. Such studies can prov...
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Zusammenfassung: | The correlation between children's personal and family characteristics (e.g.,
demographics and socioeconomic status) and their physical and mental health
status has been extensively studied across various research domains, such as
public health, medicine, and data science. Such studies can provide insights
into the underlying factors affecting children's health and aid in the
development of targeted interventions to improve their health outcomes.
However, with the availability of multiple data sources, including context data
(i.e., the background information of children) and motion data (i.e., sensor
data measuring activities of children), new challenges have arisen due to the
large-scale, heterogeneous, and multimodal nature of the data. Existing
statistical hypothesis-based and learning model-based approaches have been
inadequate for comprehensively analyzing the complex correlation between
multimodal features and multi-dimensional health outcomes due to the limited
information revealed. In this work, we first distill a set of design
requirements from multiple levels through conducting a literature review and
iteratively interviewing 11 experts from multiple domains (e.g., public health
and medicine). Then, we propose HealthPrism, an interactive visual and
analytics system for assisting researchers in exploring the importance and
influence of various context and motion features on children's health status
from multi-level perspectives. Within HealthPrism, a multimodal learning model
with a gate mechanism is proposed for health profiling and cross-modality
feature importance comparison. A set of visualization components is designed
for experts to explore and understand multimodal data freely. We demonstrate
the effectiveness and usability of HealthPrism through quantitative evaluation
of the model performance, case studies, and expert interviews in associated
domains. |
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DOI: | 10.48550/arxiv.2307.12242 |