IVCVLGMay 12, 2023

Unlocking the Potential of Medical Imaging with ChatGPT's Intelligent Diagnostics

arXiv:2305.07429v19 citations
Originality Synthesis-oriented
AI Analysis

This addresses the time-consuming and expertise-dependent task of medical image analysis for healthcare providers and patients, but it appears incremental as it combines existing methods like deep learning and ChatGPT.

The paper tackled the problem of analyzing medical images by proposing a decision support system that uses a deep learning model and ChatGPT to generate automatic diagnostics, with experiments on a large dataset showing promising performance.

Medical imaging is an essential tool for diagnosing various healthcare diseases and conditions. However, analyzing medical images is a complex and time-consuming task that requires expertise and experience. This article aims to design a decision support system to assist healthcare providers and patients in making decisions about diagnosing, treating, and managing health conditions. The proposed architecture contains three stages: 1) data collection and labeling, 2) model training, and 3) diagnosis report generation. The key idea is to train a deep learning model on a medical image dataset to extract four types of information: the type of image scan, the body part, the test image, and the results. This information is then fed into ChatGPT to generate automatic diagnostics. The proposed system has the potential to enhance decision-making, reduce costs, and improve the capabilities of healthcare providers. The efficacy of the proposed system is analyzed by conducting extensive experiments on a large medical image dataset. The experimental outcomes exhibited promising performance for automatic diagnosis through medical images.

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