Prediction of Pathological Stage in Patients with Prostate Cancer: A Neuro-Fuzzy Model.

The prediction of cancer staging in prostate cancer is a process for estimating the likelihood that the cancer has spread before treatment is given to the patient. Although important for determining the most suitable treatment and optimal management strategy for patients, staging continues to presen...

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Main Authors: Georgina Cosma, Giovanni Acampora, David Brown, Robert C Rees, Masood Khan, A Graham Pockley
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4892614?pdf=render
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spelling doaj-4144502212a34dfaa1be8a8e718180402020-11-24T21:50:35ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01116e015585610.1371/journal.pone.0155856Prediction of Pathological Stage in Patients with Prostate Cancer: A Neuro-Fuzzy Model.Georgina CosmaGiovanni AcamporaDavid BrownRobert C ReesMasood KhanA Graham PockleyThe prediction of cancer staging in prostate cancer is a process for estimating the likelihood that the cancer has spread before treatment is given to the patient. Although important for determining the most suitable treatment and optimal management strategy for patients, staging continues to present significant challenges to clinicians. Clinical test results such as the pre-treatment Prostate-Specific Antigen (PSA) level, the biopsy most common tumor pattern (Primary Gleason pattern) and the second most common tumor pattern (Secondary Gleason pattern) in tissue biopsies, and the clinical T stage can be used by clinicians to predict the pathological stage of cancer. However, not every patient will return abnormal results in all tests. This significantly influences the capacity to effectively predict the stage of prostate cancer. Herein we have developed a neuro-fuzzy computational intelligence model for classifying and predicting the likelihood of a patient having Organ-Confined Disease (OCD) or Extra-Prostatic Disease (ED) using a prostate cancer patient dataset obtained from The Cancer Genome Atlas (TCGA) Research Network. The system input consisted of the following variables: Primary and Secondary Gleason biopsy patterns, PSA levels, age at diagnosis, and clinical T stage. The performance of the neuro-fuzzy system was compared to other computational intelligence based approaches, namely the Artificial Neural Network, Fuzzy C-Means, Support Vector Machine, the Naive Bayes classifiers, and also the AJCC pTNM Staging Nomogram which is commonly used by clinicians. A comparison of the optimal Receiver Operating Characteristic (ROC) points that were identified using these approaches, revealed that the neuro-fuzzy system, at its optimal point, returns the largest Area Under the ROC Curve (AUC), with a low number of false positives (FPR = 0.274, TPR = 0.789, AUC = 0.812). The proposed approach is also an improvement over the AJCC pTNM Staging Nomogram (FPR = 0.032, TPR = 0.197, AUC = 0.582).http://europepmc.org/articles/PMC4892614?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Georgina Cosma
Giovanni Acampora
David Brown
Robert C Rees
Masood Khan
A Graham Pockley
spellingShingle Georgina Cosma
Giovanni Acampora
David Brown
Robert C Rees
Masood Khan
A Graham Pockley
Prediction of Pathological Stage in Patients with Prostate Cancer: A Neuro-Fuzzy Model.
PLoS ONE
author_facet Georgina Cosma
Giovanni Acampora
David Brown
Robert C Rees
Masood Khan
A Graham Pockley
author_sort Georgina Cosma
title Prediction of Pathological Stage in Patients with Prostate Cancer: A Neuro-Fuzzy Model.
title_short Prediction of Pathological Stage in Patients with Prostate Cancer: A Neuro-Fuzzy Model.
title_full Prediction of Pathological Stage in Patients with Prostate Cancer: A Neuro-Fuzzy Model.
title_fullStr Prediction of Pathological Stage in Patients with Prostate Cancer: A Neuro-Fuzzy Model.
title_full_unstemmed Prediction of Pathological Stage in Patients with Prostate Cancer: A Neuro-Fuzzy Model.
title_sort prediction of pathological stage in patients with prostate cancer: a neuro-fuzzy model.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2016-01-01
description The prediction of cancer staging in prostate cancer is a process for estimating the likelihood that the cancer has spread before treatment is given to the patient. Although important for determining the most suitable treatment and optimal management strategy for patients, staging continues to present significant challenges to clinicians. Clinical test results such as the pre-treatment Prostate-Specific Antigen (PSA) level, the biopsy most common tumor pattern (Primary Gleason pattern) and the second most common tumor pattern (Secondary Gleason pattern) in tissue biopsies, and the clinical T stage can be used by clinicians to predict the pathological stage of cancer. However, not every patient will return abnormal results in all tests. This significantly influences the capacity to effectively predict the stage of prostate cancer. Herein we have developed a neuro-fuzzy computational intelligence model for classifying and predicting the likelihood of a patient having Organ-Confined Disease (OCD) or Extra-Prostatic Disease (ED) using a prostate cancer patient dataset obtained from The Cancer Genome Atlas (TCGA) Research Network. The system input consisted of the following variables: Primary and Secondary Gleason biopsy patterns, PSA levels, age at diagnosis, and clinical T stage. The performance of the neuro-fuzzy system was compared to other computational intelligence based approaches, namely the Artificial Neural Network, Fuzzy C-Means, Support Vector Machine, the Naive Bayes classifiers, and also the AJCC pTNM Staging Nomogram which is commonly used by clinicians. A comparison of the optimal Receiver Operating Characteristic (ROC) points that were identified using these approaches, revealed that the neuro-fuzzy system, at its optimal point, returns the largest Area Under the ROC Curve (AUC), with a low number of false positives (FPR = 0.274, TPR = 0.789, AUC = 0.812). The proposed approach is also an improvement over the AJCC pTNM Staging Nomogram (FPR = 0.032, TPR = 0.197, AUC = 0.582).
url http://europepmc.org/articles/PMC4892614?pdf=render
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