Literature DB >> 14610404

Comparison of Cox regression with other methods for determining prediction models and nomograms.

Michael W Kattan1.   

Abstract

PURPOSE: There is controversy as to whether artificial neural networks and other machine learning methods provide predictions that are more accurate than those provided by traditional statistical models when applied to censored data.
MATERIALS AND METHODS: Several machine learning prediction methods are compared with Cox proportional hazards regression using 3 large urological datasets. As a measure of predictive ability, discrimination that is similar to an area under the receiver operating characteristic curve is computed for each.
RESULTS: In all 3 datasets Cox regression provided comparable or superior predictions compared with neural networks and other machine learning techniques. In general, this finding is consistent with the literature.
CONCLUSIONS: Although theoretically attractive, artificial neural networks and other machine learning techniques do not often provide an improvement in predictive accuracy over Cox regression.

Entities:  

Mesh:

Year:  2003        PMID: 14610404     DOI: 10.1097/01.ju.0000094764.56269.2d

Source DB:  PubMed          Journal:  J Urol        ISSN: 0022-5347            Impact factor:   7.450


  37 in total

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Review 7.  Critical review of prostate cancer predictive tools.

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Review 8.  Use of nomograms as predictive tools in bladder cancer.

Authors:  Ahmad Shabsigh; Bernard H Bochner
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Review 9.  Combining a molecular profile with a clinical and pathological profile: biostatistical considerations.

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Review 10.  A systematic review of the tools available for predicting survival and managing patients with urothelial carcinomas of the bladder and of the upper tract in a curative setting.

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