Application of artificial neural networks in breast and colorectal surgery

Accurate prediction of a clinical event in an individual patient is extremely useful, as treatment can be appropriately tailored to that individual, avoiding either over or under treatment. More importantly interventions based on prediction in a group of patients is no longer acceptable to an indivi...

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Main Author: Ramesh, Aswatha Narayana Murthy
Other Authors: Drew, Philip
Published: University of Hull 2008
Subjects:
610
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.503731
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spelling ndltd-bl.uk-oai-ethos.bl.uk-5037312015-12-03T03:18:49ZApplication of artificial neural networks in breast and colorectal surgeryRamesh, Aswatha Narayana MurthyDrew, Philip2008Accurate prediction of a clinical event in an individual patient is extremely useful, as treatment can be appropriately tailored to that individual, avoiding either over or under treatment. More importantly interventions based on prediction in a group of patients is no longer acceptable to an individual patient, as they increasingly demand to know what is likely to happen to them. Artificial neural networks (ANNs) are a nonlinear regression method capable of accurately predicting outcome in an individual patient. We identified two scenarios where accurate prediction in individual patient can greatly influence their management. In the first study, we investigated the ability of ANNs to predict axillary lymph node metastasis in patients with breast cancer and compared with traditional logistic regression analysis. In addition, the ability of ANNs to generalise across institutions was studied and their ability to predict in individual patient was explored. In the second study, the predictive capability of ANNs was explored to predict anastomotic leak following left sided large bowel anastomosis and compared with traditional logistic regression analysis. Multi-layer perceptron ANNs utilising a backpropagation learning algorithm were designed and then trained and validated on breast and colorectal cancer databases. ANNs were superior to logistic regression method in predicting lymph node metastasis in breast cancer. Furthermore, the previously trained ANNs were able to provide accurate predictions across an independent institution and in individual patients. ANNs achieved similar accuracy as logistic regression analysis in predicting anastomotic leak but were able to accurately predict leak in individual patients. ANNs have the potential to be used as predictive tool in individual patients in a variety of clinical setting.610MedicineUniversity of Hullhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.503731http://hydra.hull.ac.uk/resources/hull:1685Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 610
Medicine
spellingShingle 610
Medicine
Ramesh, Aswatha Narayana Murthy
Application of artificial neural networks in breast and colorectal surgery
description Accurate prediction of a clinical event in an individual patient is extremely useful, as treatment can be appropriately tailored to that individual, avoiding either over or under treatment. More importantly interventions based on prediction in a group of patients is no longer acceptable to an individual patient, as they increasingly demand to know what is likely to happen to them. Artificial neural networks (ANNs) are a nonlinear regression method capable of accurately predicting outcome in an individual patient. We identified two scenarios where accurate prediction in individual patient can greatly influence their management. In the first study, we investigated the ability of ANNs to predict axillary lymph node metastasis in patients with breast cancer and compared with traditional logistic regression analysis. In addition, the ability of ANNs to generalise across institutions was studied and their ability to predict in individual patient was explored. In the second study, the predictive capability of ANNs was explored to predict anastomotic leak following left sided large bowel anastomosis and compared with traditional logistic regression analysis. Multi-layer perceptron ANNs utilising a backpropagation learning algorithm were designed and then trained and validated on breast and colorectal cancer databases. ANNs were superior to logistic regression method in predicting lymph node metastasis in breast cancer. Furthermore, the previously trained ANNs were able to provide accurate predictions across an independent institution and in individual patients. ANNs achieved similar accuracy as logistic regression analysis in predicting anastomotic leak but were able to accurately predict leak in individual patients. ANNs have the potential to be used as predictive tool in individual patients in a variety of clinical setting.
author2 Drew, Philip
author_facet Drew, Philip
Ramesh, Aswatha Narayana Murthy
author Ramesh, Aswatha Narayana Murthy
author_sort Ramesh, Aswatha Narayana Murthy
title Application of artificial neural networks in breast and colorectal surgery
title_short Application of artificial neural networks in breast and colorectal surgery
title_full Application of artificial neural networks in breast and colorectal surgery
title_fullStr Application of artificial neural networks in breast and colorectal surgery
title_full_unstemmed Application of artificial neural networks in breast and colorectal surgery
title_sort application of artificial neural networks in breast and colorectal surgery
publisher University of Hull
publishDate 2008
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.503731
work_keys_str_mv AT rameshaswathanarayanamurthy applicationofartificialneuralnetworksinbreastandcolorectalsurgery
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