Performance Evaluation of Thermography-Based Computer-Aided Diagnostic Systems for Detecting Breast Cancer: An Empirical Study

Author:

Gupta Trasha1ORCID,Agrawal R. K.2ORCID,Sangal Rishu3ORCID,Rao S. Avinash4ORCID

Affiliation:

1. Delhi Technological University, India

2. Jawaharlal Nehru University, India

3. B. L. Kapoor - Max Super Speciality Hospital, Delhi, India

4. Ex-Director, Oncology, Rajiv Gandhi Cancer Institute And Research Centre (RGCIRC), Delhi, India

Abstract

Among women, breast cancer is one of the most commonly occurring cancers besides skin and cervix cancer. Developing countries are at a higher risk of mortality due to late-stage presentation, inaccessible diagnosis, and treatment. Thermography-based technology, aided with machine learning, for screening/diagnosing breast cancer is non-invasive, cost-wise appropriate, and requires very little equipment in rural areas with limited facilities. In this paper, we systematically compare the state-of-the-art feature extraction approaches on a uniform platform, using two Common datasets, three Feature Selection methods, four well-known Classifiers, and three Cross-Validation strategies and analyze the results, for a fair comparison. Also, we evaluated the performance when all the features were combined (Unified Model) on the same platform. Experimental results show that the classification accuracy improves considerably with the use of feature selection methods. Among all the combinations considered, the classification model with Union_FeatureSet and mRMR gave the best performance for both datasets. We obtained a feature subset of 26 and 34 features (from Union_FeatureSet) with a combination of mRMR and SVM, which are relevant, non-redundant, and distinguish normal and abnormal thermal patterns with the accuracy of 95.73% on the DMR-IR dataset and 92.533% on the RGC-IR dataset.

Publisher

Association for Computing Machinery (ACM)

Reference59 articles.

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3. Matheus de Freitas Oliveira Baffa and Aura Conci. 2022. Radiomics for Breast IR-Imaging Classification. In MICCAI Workshop on Medical Image Assisted Blomarkers’ Discovery. Springer, 10–19.

4. Report to the working group to review the National Cancer Institute-American Cancer Society breast cancer demonstration projects;Beahrs OH;J Natl Caner Inst,1979

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