A neural network based breast cancer prognosis model with PCA processed features

Accurate identification of the diagnosed cases is extremely important for a reliable prognosis of breast cancer. Data analytics and learning based methods can provide an effective framework for prognostic studies by accurately classifying data instances into relevant classes based on the tumor sever...

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Published in2016 International Conference on Advances in Computing, Communications and Informatics (ICACCI) pp. 1896 - 1901
Main Authors Jhajharia, Smita, Varshney, Harish Kumar, Verma, Seema, Kumar, Rajesh
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.09.2016
Subjects
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DOI10.1109/ICACCI.2016.7732327

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Abstract Accurate identification of the diagnosed cases is extremely important for a reliable prognosis of breast cancer. Data analytics and learning based methods can provide an effective framework for prognostic studies by accurately classifying data instances into relevant classes based on the tumor severity. Accordingly, a multivariate statistical approach has been coupled with an artificial intelligence based learning technique to implement a prediction model. Principal components analysis pre-processes the data and extracts features in the most relevant form for training an artificial neural network that learns the patterns in the data for classification of new instances. The diagnostic data of the original Wisconsin breast cancer database accessed from the UCI machine learning repository has been used in the study. The proposed hybrid model shows promising results when compared with other classification algorithms used most commonly in the literature and can provide a future scope for creation of more sophisticated machine learning based cancer prognostic models.
AbstractList Accurate identification of the diagnosed cases is extremely important for a reliable prognosis of breast cancer. Data analytics and learning based methods can provide an effective framework for prognostic studies by accurately classifying data instances into relevant classes based on the tumor severity. Accordingly, a multivariate statistical approach has been coupled with an artificial intelligence based learning technique to implement a prediction model. Principal components analysis pre-processes the data and extracts features in the most relevant form for training an artificial neural network that learns the patterns in the data for classification of new instances. The diagnostic data of the original Wisconsin breast cancer database accessed from the UCI machine learning repository has been used in the study. The proposed hybrid model shows promising results when compared with other classification algorithms used most commonly in the literature and can provide a future scope for creation of more sophisticated machine learning based cancer prognostic models.
Author Jhajharia, Smita
Verma, Seema
Kumar, Rajesh
Varshney, Harish Kumar
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Snippet Accurate identification of the diagnosed cases is extremely important for a reliable prognosis of breast cancer. Data analytics and learning based methods can...
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StartPage 1896
SubjectTerms Artificial Neural Network
Breast cancer
Classification
Data mining
Prediction model
Predictive models
Principal component analysis
Prognosis
Prognostics and health management
Title A neural network based breast cancer prognosis model with PCA processed features
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