Automated Retinal Image Analysis and Medical Report Generation through Deep Learning
Jia-Hong Huang

TL;DR
This paper explores AI-driven automation of medical report generation from retinal images, aiming to improve diagnostic efficiency and accuracy in ophthalmology through advanced deep learning techniques.
Contribution
It introduces novel multi-modal deep learning methods that enhance report accuracy and interpretability, addressing key challenges in automated retinal image analysis.
Findings
Achieved state-of-the-art performance in report generation metrics
Enhanced interpretability of AI models for clinical trust
Improved medical keyword representation methods
Abstract
The increasing prevalence of retinal diseases poses a significant challenge to the healthcare system, as the demand for ophthalmologists surpasses the available workforce. This imbalance creates a bottleneck in diagnosis and treatment, potentially delaying critical care. Traditional methods of generating medical reports from retinal images rely on manual interpretation, which is time-consuming and prone to errors, further straining ophthalmologists' limited resources. This thesis investigates the potential of Artificial Intelligence (AI) to automate medical report generation for retinal images. AI can quickly analyze large volumes of image data, identifying subtle patterns essential for accurate diagnosis. By automating this process, AI systems can greatly enhance the efficiency of retinal disease diagnosis, reducing doctors' workloads and enabling them to focus on more complex cases.…
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Taxonomy
TopicsRetinal Imaging and Analysis · Brain Tumor Detection and Classification
MethodsFocus
