Abstract
With an emphasis on liver segmentation in medical pictures, this research investigates the use of artificial intelligence (AI) in the field of smart healthcare. In medical image analysis, liver segmentation is a crucial task, especially for liver disease diagnosis, surgical planning, and therapy monitoring. While AI-powered approaches, particularly those that make use of deep learning, offer the potential for increases in accuracy and efficiency, traditional image analysis methods are frequently slow and prone to errors. We provide a summary of the state-of-the-art techniques, difficulties, and developments in AI-based liver segmentation, with a focus on deep learning frameworks like transfer learning and convolutional neural networks (CNNs). The goal is to demonstrate how AI has the ability to transform liver disease detection and therapy by providing intelligent medical solutions. With an emphasis on diseases including pneumonia, lung cancer, and fractures, the suggested method uses Convolutional Neural Networks (CNNs) to precisely identify anomalies and patterns. The technology improves diagnostic accuracy, decreases human error, and expedites clinical workflows by automating the diagnostic process. Furthermore, the system can get better over time by adjusting to new datasets and medical procedures because to the incorporation of continuous learning techniques. By facilitating prompt intervention and increasing diagnosis speed and accuracy, AI-based liver segmentation holds the potential to revolutionize medical practice. When handling complex liver pictures, deep learning models particularly those that make use of transfer learning and 3D segmentation networks have demonstrated greater performance, frequently attaining higher accuracy than conventional not withstanding these difficulties, recent techniques. However, addressing the inherent diversity in liver pictures resulting from variations in patient anatomy, disease development, and imaging modality (CT, MRI, Ultrasound) presents a difficulty. Developments have shown that AI models can effectively generalize to various patient populations and imaging situations when trained on sizable and varied datasets.
Published Version
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have