Using Bayesian neural networks with ARD input selection to detect malignant ovarian masses prior to surgery
(2008) 28th Annual International Conference of the IEEE-Engineering-in-Medicine-and-Biology-Society 17(5-6). p.489-500- Abstract
- In this paper, we applied Bayesian multi-layer perceptrons (MLP) using the evidence procedure to predict malignancy of ovarian masses in a large (n = 1,066) multi-centre data set. Automatic relevance determination (ARD) was used to select the most relevant inputs. Fivefold cross-validation (5CV) and repeated 5CV was used to select the optimal combination of input set and number of hidden neurons. Results indicate good performance of the models with area under the receiver operating characteristic curve values of 0.93-0.94 on independent data. Comparison with a linear benchmark model and a previously developed logistic regression model shows that the present problem is very well linearly separable. A resampling analysis further shows that... (More)
- In this paper, we applied Bayesian multi-layer perceptrons (MLP) using the evidence procedure to predict malignancy of ovarian masses in a large (n = 1,066) multi-centre data set. Automatic relevance determination (ARD) was used to select the most relevant inputs. Fivefold cross-validation (5CV) and repeated 5CV was used to select the optimal combination of input set and number of hidden neurons. Results indicate good performance of the models with area under the receiver operating characteristic curve values of 0.93-0.94 on independent data. Comparison with a linear benchmark model and a previously developed logistic regression model shows that the present problem is very well linearly separable. A resampling analysis further shows that the number of hidden neurons specified in the ARD analyses for input selection may influence model performance. This paper shows that Bayesian MLPs, although not frequently used, are a useful tool for detecting malignant ovarian tumours. (Less)
Please use this url to cite or link to this publication:
https://lup.lub.lu.se/record/1286605
- author
- Van Calster, Ben ; Timmerman, Dirk ; Nabney, Ian T. ; Valentin, Lil LU ; Testa, Antonia C. ; Van Holsbeke, Caroline ; Vergote, Ignace and Van Huffel, Sabine
- organization
- publishing date
- 2008
- type
- Chapter in Book/Report/Conference proceeding
- publication status
- published
- subject
- keywords
- ultrasound, automatic relevance determination, netlab, evidence framework, Bayesian, ovarian tumour classification, multi-layer perceptrons
- host publication
- NEURAL COMPUTING & APPLICATIONS
- volume
- 17
- issue
- 5-6
- pages
- 489 - 500
- publisher
- Springer
- conference name
- 28th Annual International Conference of the IEEE-Engineering-in-Medicine-and-Biology-Society
- conference dates
- 2006-08-30 - 2006-09-03
- external identifiers
-
- wos:000259483200007
- scopus:52349091540
- ISSN
- 0941-0643
- DOI
- 10.1007/s00521-007-0147-1
- language
- English
- LU publication?
- yes
- id
- 2e8b93df-2207-4bd1-8873-fbbe9de5fa43 (old id 1286605)
- date added to LUP
- 2016-04-01 14:26:06
- date last changed
- 2022-03-22 00:01:49
@inproceedings{2e8b93df-2207-4bd1-8873-fbbe9de5fa43, abstract = {{In this paper, we applied Bayesian multi-layer perceptrons (MLP) using the evidence procedure to predict malignancy of ovarian masses in a large (n = 1,066) multi-centre data set. Automatic relevance determination (ARD) was used to select the most relevant inputs. Fivefold cross-validation (5CV) and repeated 5CV was used to select the optimal combination of input set and number of hidden neurons. Results indicate good performance of the models with area under the receiver operating characteristic curve values of 0.93-0.94 on independent data. Comparison with a linear benchmark model and a previously developed logistic regression model shows that the present problem is very well linearly separable. A resampling analysis further shows that the number of hidden neurons specified in the ARD analyses for input selection may influence model performance. This paper shows that Bayesian MLPs, although not frequently used, are a useful tool for detecting malignant ovarian tumours.}}, author = {{Van Calster, Ben and Timmerman, Dirk and Nabney, Ian T. and Valentin, Lil and Testa, Antonia C. and Van Holsbeke, Caroline and Vergote, Ignace and Van Huffel, Sabine}}, booktitle = {{NEURAL COMPUTING & APPLICATIONS}}, issn = {{0941-0643}}, keywords = {{ultrasound; automatic relevance determination; netlab; evidence framework; Bayesian; ovarian tumour classification; multi-layer perceptrons}}, language = {{eng}}, number = {{5-6}}, pages = {{489--500}}, publisher = {{Springer}}, title = {{Using Bayesian neural networks with ARD input selection to detect malignant ovarian masses prior to surgery}}, url = {{http://dx.doi.org/10.1007/s00521-007-0147-1}}, doi = {{10.1007/s00521-007-0147-1}}, volume = {{17}}, year = {{2008}}, }