HyMNet: a Multimodal Deep Learning System for Hypertension Classification using Fundus Photographs and Cardiometabolic Risk Factors
Mohammed Baharoon, Hessa Almatar, Reema Alduhayan, Tariq Aldebasi,, Badr Alahmadi, Yahya Bokhari, Mohammed Alawad, Ahmed Almazroa, Abdulrhman, Aljouie

TL;DR
HyMNet is a multimodal deep learning system that combines fundus images and cardiometabolic risk factors, such as age and gender, to improve hypertension classification accuracy over unimodal approaches.
Contribution
This study introduces HyMNet, the first multimodal deep learning system integrating fundus images with age and gender for hypertension detection.
Findings
Multimodal model outperforms unimodal system in F1 score
Fusion of fundus images with risk factors improves accuracy
Diabetes acts as a confounding variable in prediction
Abstract
In recent years, deep learning has shown promise in predicting hypertension (HTN) from fundus images. However, most prior research has primarily focused on analyzing a single type of data, which may not capture the full complexity of HTN risk. To address this limitation, this study introduces a multimodal deep learning (MMDL) system, dubbed HyMNet, which combines fundus images and cardiometabolic risk factors, specifically age and gender, to improve hypertension detection capabilities. Our MMDL system uses RETFound, a foundation model pre-trained on 1.6 million retinal images, for the fundus path and a fully connected neural network for the age and gender path. The two paths are jointly trained by concatenating the feature vectors from each path that are then fed into a fusion network. The system was trained on 5,016 retinal images from 1,243 individuals collected from the Saudi…
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Taxonomy
TopicsRetinal Imaging and Analysis · Artificial Intelligence in Healthcare
