Web-based Application for Cancerous Object Segmentation in Ultrasound Images Using Active Contour Method

Dwi Oktaviyanti, Anan Nugroho, Hari Wibawanto, None Subiyanto
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Abstract

Segmentation, or the process of separating clinical objects from surrounding tissue in medical images, is an important step in the Computer-Aided Diagnosis (CAD) system. The CAD system is developed to assist radiologists in diagnosing cancer malignancy, which in this research is found in ultrasound (US) medical imaging. The manual segmentation process, which cannot be accessed remotely, is a limitation of the CAD system because cancer objects are screened frequently, continuously, and at all times. Therefore, this research aims to build a user-friendly web application called COSION (Cancerous Object Segmentation) that provides easy access for radiologists to segment cancer objects in US images by adopting an active contour method called HERBAC (Hybrid Edge & Region-Based Active Contour). The waterfall method was used to develop the web application with Django as the web framework. The successfully built web application is named Cosion. Cosion was tested on 114 radiology breast and thyroid US images. Functional, portability, efficiency, reliability, expert validation, and usability testing concluded that Cosion runs well and is suitable for use with a functionality value of 0.9375, an average GTmetrix score of 96.43±0.66%, 100% stress testing percentage, 77.5% expert validation, and 75.8% usability. These quantitative performances indicate that the COSION web application is suitable for implementation in the CAD system for US medical imaging.
基于web的主动轮廓法在超声图像癌变目标分割中的应用
分割,或将医学图像中的临床目标与周围组织分离的过程,是计算机辅助诊断(CAD)系统中的重要步骤。CAD系统的开发是为了帮助放射科医生诊断恶性肿瘤,在本研究中发现的是超声(美国)医学成像。手工分割过程不能远程访问,这是CAD系统的一个限制,因为癌症对象是频繁、连续和随时筛选的。因此,本研究旨在构建一个用户友好的web应用程序,称为COSION(癌对象分割),提供放射科医生通过采用称为HERBAC(混合边缘&基于区域的活动轮廓)。使用瀑布式方法以Django为web框架开发web应用程序。成功构建的web应用程序被命名为Cosion。对114张乳腺和甲状腺x线影像进行了Cosion检测。功能、可移植性、效率、可靠性、专家验证和可用性测试表明,Cosion运行良好,适合使用,功能值为0.9375,GTmetrix平均得分为96.43±0.66%,压力测试百分比为100%,专家验证率为77.5%,可用性为75.8%。这些量化性能表明,COSION web应用程序适合在美国医学成像CAD系统中实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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12 weeks
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