Multimodal llms for health grounded in individual-specific data

A Belyaeva, J Cosentino, F Hormozdiari… - Workshop on Machine …, 2023 - Springer
Foundation large language models (LLMs) have shown an impressive ability to solve tasks
across a wide range of fields including health. To effectively solve personalized health tasks …

Deep learning with noisy labels in medical prediction problems: a scoping review

Y Wei, Y Deng, C Sun, M Lin, H Jiang… - Journal of the American …, 2024 - academic.oup.com
Objectives Medical research faces substantial challenges from noisy labels attributed to
factors like inter-expert variability and machine-extracted labels. Despite this, the adoption of …

Advancing Multimodal Medical Capabilities of Gemini

L Yang, S Xu, A Sellergren, T Kohlberger… - arXiv preprint arXiv …, 2024 - arxiv.org
Many clinical tasks require an understanding of specialized data, such as medical images
and genomics, which is not typically found in general-purpose large multimodal models …

A review of disease risk prediction methods and applications in the omics era

C Sun, X Cheng, J Xu, H Chen, J Tao, Y Dong… - …, 2024 - Wiley Online Library
Risk prediction and disease prevention are the innovative care challenges of the 21st
century. Apart from freeing the individual from the pain of disease, it will lead to low medical …

Unsupervised representation learning improves genomic discovery for lung function and respiratory disease prediction

T Yun, J Cosentino, B Behsaz, ZR McCaw, D Hill… - medRxiv, 2023 - medrxiv.org
Background: High-dimensional clinical data are becoming more accessible in biobank-scale
datasets. However, accurately phenotyping high-dimensional clinical data remains a major …

[HTML][HTML] Deep learning utilizing suboptimal spirometry data to improve lung function and mortality prediction in the UK Biobank

D Hill, M Torop, A Masoomi, PJ Castaldi, EK Silverman… - medRxiv, 2023 - ncbi.nlm.nih.gov
Background: Spirometry measures lung function by selecting the best of multiple efforts
meeting pre-specified quality control (QC), and reporting two key metrics: forced expiratory …

[HTML][HTML] Unsupervised representation learning improves genomic discovery and risk prediction for respiratory and circulatory functions and diseases

T Yun, J Cosentino, B Behsaz, ZR McCaw, D Hill… - medRxiv, 2023 - ncbi.nlm.nih.gov
High-dimensional clinical data are becoming more accessible in biobank-scale datasets.
However, effectively utilizing high-dimensional clinical data for genetic discovery remains …

Unraveling COVID-19 relationship with anxiety disorders and symptoms using genome-wide data

Z Asgel, MR Kouakou, D Koller, GA Pathak… - Journal of Affective …, 2024 - Elsevier
Background There is still a limited understanding of the dynamics contributing to the
comorbidity of COVID-19 and anxiety outcomes. Methods To dissect the pleiotropic …

[HTML][HTML] Development and application of a deep learning-based comprehensive early diagnostic model for chronic obstructive pulmonary disease

Z Zhu, S Zhao, J Li, Y Wang, L Xu, Y Jia, Z Li, W Li… - Respiratory …, 2024 - Springer
Background Chronic obstructive pulmonary disease (COPD) is a frequently diagnosed yet
treatable condition, provided it is identified early and managed effectively. This study aims to …

[HTML][HTML] Predicting early-onset COPD risk in adults aged 20–50 using electronic health records and machine learning

G Liu, J Hu, J Yang, J Song - PeerJ, 2024 - peerj.com
Chronic obstructive pulmonary disease (COPD) is a major public health concern, affecting
estimated 164 million people worldwide. Early detection and intervention strategies are …