A novel approach for accurate prediction of spontaneous passage of ureteral stones: Support vector machines
Autor: | G. Arandjelovic, P. Gasparella, Gert R. G. Lanckriet, Mariangela Mancini, P.F. Bassi, F. Dal Moro, Francesco Pagano, Alessandro Abate |
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Rok vydání: | 2006 |
Předmět: |
medicine.medical_specialty
Ureteral Calculi Computer science Logistic regression Artificial Intelligence medicine Feature (machine learning) Humans support vector machine Renal colic Artificial neural network business.industry urolithiasis Pattern recognition neural networks Surgery Data set Support vector machine Statistical classification Logistic Models ComputingMethodologies_PATTERNRECOGNITION Kernel method Nephrology statistical methods Neural Networks Computer Artificial intelligence medicine.symptom business Algorithms |
Zdroj: | Kidney International. 69:157-160 |
ISSN: | 0085-2538 |
DOI: | 10.1038/sj.ki.5000010 |
Popis: | The objective of this study was to optimally predict the spontaneous passage of ureteral stones in patients with renal colic by applying for the first time support vector machines (SVM), an instance of kernel methods, for classification. After reviewing the results found in the literature, we compared the performances obtained with logistic regression (LR) and accurately trained artificial neural networks (ANN) to those obtained with SVM, that is, the standard SVM, and the linear programming SVM (LP-SVM); the latter techniques show an improved performance. Moreover, we rank the prediction factors according to their importance using Fisher scores and the LP-SVM feature weights. A data set of 1163 patients affected by renal colic has been analyzed and restricted to single out a statistically coherent subset of 402 patients. Nine clinical factors are used as inputs for the classification algorithms, to predict one binary output. The algorithms are cross-validated by training and testing on randomly selected train- and test-set partitions of the data and reporting the average performance on the test sets. The SVM-based approaches obtained a sensitivity of 84.5% and a specificity of 86.9%. The feature ranking based on LP-SVM gives the highest importance to stone size, stone position and symptom duration before check-up. We propose a statistically correct way of employing LR, ANN and SVM for the prediction of spontaneous passage of ureteral stones in patients with renal colic. SVM outperformed ANN, as well as LR. This study will soon be translated into a practical software toolbox for actual clinical usage. |
Databáze: | OpenAIRE |
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