AI-Powered Diagnostic Models: Leveraging Deep Learning and Computer Vision for Early Disease Detection
Abstract
Disease detection at the early stages, precisely, are one of the prerequisites of efficient medical care and a better patient experience. The low-technology diagnostic tools typically do not need much time and require manual interpretation of the medical information or images, which may be subject to human error. This paper addresses how Artificial Intelligence (AI), or, in particular, deep learning and computer vision can be used to develop efficient diagnostic models. We suggest a structure through which we use convolutional neural networks (CNNs) to analyze medical images (that is, X-rays, MRIs, and histopathology slides) in order to identify different pathologies at the initial stages and automatically. This study shows that AIbased systems have the potential to improve diagnoses, minimize workflow and inefficiencies, and become an invaluable aid to clinicians, which can eventually lead to a more proactive and personalized healthcare.