Affiliation:
1. Department of Electronics and Communication Engineering, Motilal Nehru National Institute of Technology, Allahabad, Prayagraj, U.P 211004,
India
Abstract
Abstract:
Medical diagnostic systems has recently been very popular and reliable because of possible automatic detections. The machine learning algorithm
is evolved as a core tool of computer-aided diagnosis (CAD) for automatic early and accurate disease detections. The algorithm follows region of
interest (ROI) selection followed by specific feature extractions and selection from medical images. The selected features are then fed to suitable
classifiers for disease identification. The machine learning algorithm's performance depends on the features selected and the classifiers employed
for the job. This paper reviews different feature extraction selection and classification techniques for CAD from ultrasound images.
Ultrasonography (USG), due to its portability and its non-invasive nature, is the prime choice of doctors for prescribing as an imaging test. A
survey on the USG imaging based on four major diseases is performed in this paper, whose diagnosis followed by automatic detection. Various
techniques applied for feature extraction, selection, and classification by different authors to achieve improved accuracy are tabulated. For medical
images, we found texture based gray-level extracted features and SVM (support vector machine) classifiers to be more significant in improving
classification accuracy, even achieving 100% accuracy in many research articles. However, many research articles also suggest the importance of
student’s t-test in improving classification accuracy by selecting significant features from extracted features. The proposed algorithm's accuracy
also depends on the quality of medical images, which are frequently degraded by the introduction of noise and artifacts while imaging acquisition.
So, challenges in denoising are added in this paper as a separate topic to highlight the role of the machine learning algorithm in removing noise and
artifacts from the USG images.
Publisher
Bentham Science Publishers Ltd.
Subject
Radiology, Nuclear Medicine and imaging