Literature DB >> 16865598

Support vector machine learning model for the prediction of sentinel node status in patients with cutaneous melanoma.

Simone Mocellin1, Alessandro Ambrosi, Maria Cristina Montesco, Mirto Foletto, Giorgio Zavagno, Donato Nitti, Mario Lise, Carlo Riccardo Rossi.   

Abstract

BACKGROUND: Currently, approximately 80% of melanoma patients undergoing sentinel node biopsy (SNB) have negative sentinel lymph nodes (SLNs), and no prediction system is reliable enough to be implemented in the clinical setting to reduce the number of SNB procedures. In this study, the predictive power of support vector machine (SVM)-based statistical analysis was tested.
METHODS: The clinical records of 246 patients who underwent SNB at our institution were used for this analysis. The following clinicopathologic variables were considered: the patient's age and sex and the tumor's histological subtype, Breslow thickness, Clark level, ulceration, mitotic index, lymphocyte infiltration, regression, angiolymphatic invasion, microsatellitosis, and growth phase. The results of SVM-based prediction of SLN status were compared with those achieved with logistic regression.
RESULTS: The SLN positivity rate was 22% (52 of 234). When the accuracy was > or = 80%, the negative predictive value, positive predictive value, specificity, and sensitivity were 98%, 54%, 94%, and 77% and 82%, 41%, 69%, and 93% by using SVM and logistic regression, respectively. Moreover, SVM and logistic regression were associated with a diagnostic error and an SNB percentage reduction of (1) 1% and 60% and (2) 15% and 73%, respectively.
CONCLUSIONS: The results from this pilot study suggest that SVM-based prediction of SLN status might be evaluated as a prognostic method to avoid the SNB procedure in 60% of patients currently eligible, with a very low error rate. If validated in larger series, this strategy would lead to obvious advantages in terms of both patient quality of life and costs for the health care system.

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Year:  2006        PMID: 16865598     DOI: 10.1245/ASO.2006.03.019

Source DB:  PubMed          Journal:  Ann Surg Oncol        ISSN: 1068-9265            Impact factor:   5.344


  2 in total

1.  Effects of SVM parameter optimization on discrimination and calibration for post-procedural PCI mortality.

Authors:  Michael E Matheny; Frederic S Resnic; Nipun Arora; Lucila Ohno-Machado
Journal:  J Biomed Inform       Date:  2007-05-18       Impact factor: 6.317

2.  Epithelial-mesenchymal transition biomarkers and support vector machine guided model in preoperatively predicting regional lymph node metastasis for rectal cancer.

Authors:  X-J Fan; X-B Wan; Y Huang; H-M Cai; X-H Fu; Z-L Yang; D-K Chen; S-X Song; P-H Wu; Q Liu; L Wang; J-P Wang
Journal:  Br J Cancer       Date:  2012-04-26       Impact factor: 7.640

  2 in total

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