2018
DOI: 10.4108/eai.13-7-2018.164177
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Efficient Diagnosis of Liver Disease using Support Vector Machine Optimized with Crows Search Algorithm

Abstract: The early and accurate prediction of liver disease in patients is still a challenging task among medical practitioners even with latest advanced technologies. The support vector machines are widely used in medical domain. It has proved its efficiency on producing good diagnostic parameters. These results can be further improved by optimizing the hyperparameters of support vector machines. The proposed work is based on optimizing support vector machines with crow search algorithm. This optimized support vector … Show more

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Cited by 137 publications
(17 citation statements)
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“…SVM maps the given data into linearly separable and non linearly separable data. If the given data can be separated linearly SVM can easily separate two classes (Devikanniga, Ramu, and Haldorai 2018). If the given data is non-linearly separable then, the datas are mapped into higher dimensions to provide better classification performance.…”
Section: Methodsmentioning
confidence: 99%
“…SVM maps the given data into linearly separable and non linearly separable data. If the given data can be separated linearly SVM can easily separate two classes (Devikanniga, Ramu, and Haldorai 2018). If the given data is non-linearly separable then, the datas are mapped into higher dimensions to provide better classification performance.…”
Section: Methodsmentioning
confidence: 99%
“…The section at beginning built as testing the system by [11] interval database, when the image determined before enhancement and then measure the segmentation and hide text rate of the system when the determination process performed after enhancement the images, figure1 showed the sample of the database in this paper [12].…”
Section: Statistical Proposed Methodology Approachmentioning
confidence: 99%
“…Regardless of the fact that workflow interruptions and time sensitivity (high workloads) are common in all hospital environments, the requirement to evaluate clinical data in a brief consultation may contribute to CDSS deployment being restricted in primary care. In [10], researchers' results demonstrate how mediating variable factors like age, clinical experience, and ehealth literacy influence clinicians' behavior when it comes to implementing digital healthcare systems. These results are in line with previous research on the impact of these variables on the perceived utility of digital health systems and users' intentions to utilize them.…”
Section: Literature Reviewmentioning
confidence: 99%