Maity Rudrani, Raja Sankari V M, U Snekhalatha, N A Rajesh, Salvador Anela L
Biomedical Engineering Department, Faculty of Engineering and Technology, SRM Institute of Science and Technology, Kattankulathur, 603203, Tamil Nadu, India.
College of Engineering, Architecture and Fine Arts, Batangas State University, Batangas, Philippines.
Biomed Phys Eng Express. 2024 Jun 28;10(4). doi: 10.1088/2057-1976/ad5a14.
Presently, close to two million patients globally succumb to gastrointestinal reflux diseases (GERD). Video endoscopy represents cutting-edge technology in medical imaging, facilitating the diagnosis of various gastrointestinal ailments including stomach ulcers, bleeding, and polyps. However, the abundance of images produced by medical video endoscopy necessitates significant time for doctors to analyze them thoroughly, posing a challenge for manual diagnosis. This challenge has spurred research into computer-aided techniques aimed at diagnosing the plethora of generated images swiftly and accurately. The novelty of the proposed methodology lies in the development of a system tailored for the diagnosis of gastrointestinal diseases. The proposed work used an object detection method called Yolov5 for identifying abnormal region of interest and Deep LabV3+ for segmentation of abnormal regions in GERD. Further, the features are extracted from the segmented image and given as an input to the seven different machine learning classifiers and custom deep neural network model for multi-stage classification of GERD. The DeepLabV3+ attains an excellent segmentation accuracy of 95.2% and an F1 score of 93.3%. The custom dense neural network obtained a classification accuracy of 90.5%. Among the seven different machine learning classifiers, support vector machine (SVM) outperformed with classification accuracy of 87% compared to all other class outperformed combination of object detection, deep learning-based segmentation and machine learning classification enables the timely identification and surveillance of problems associated with GERD for healthcare providers.
目前,全球有近200万患者死于胃食管反流病(GERD)。视频内窥镜检查是医学成像领域的前沿技术,有助于诊断各种胃肠道疾病,包括胃溃疡、出血和息肉。然而,医学视频内窥镜检查产生的大量图像需要医生花费大量时间进行全面分析,这给人工诊断带来了挑战。这一挑战促使人们开展计算机辅助技术研究,旨在快速、准确地诊断大量生成的图像。所提出方法的新颖之处在于开发了一种专门用于诊断胃肠道疾病的系统。所提出的工作使用了一种名为Yolov5的目标检测方法来识别感兴趣的异常区域,并使用Deep LabV3+对GERD中的异常区域进行分割。此外,从分割后的图像中提取特征,并将其作为输入提供给七个不同的机器学习分类器和定制的深度神经网络模型,用于GERD的多阶段分类。DeepLabV3+的分割准确率达到了95.2%,F1分数为93.3%。定制的密集神经网络的分类准确率为90.5%。在七个不同的机器学习分类器中,支持向量机(SVM)的表现优于其他分类器,其分类准确率为87%。目标检测、基于深度学习的分割和机器学习分类的组合能够为医疗保健提供者及时识别和监测与GERD相关的问题。