Towards a Cost-Effective Predictive Mammogram Classification Model for Breast Cancer Diagnosis

Bright Sten Charamba, Edmore Chikohora

Allbwn ymchwil: Pennod mewn Llyfr/Adroddiad/Trafodion CynhadleddCyfraniad mewn cynhadleddadolygiad gan gymheiriaid

Crynodeb

Breast cancer is the deadliest common cancer in women and slightly in men worldwide. Routine mammography is the standard technique for preventive care, detection and classification of breast cancer before a biopsy. It has come to our attention that, routine mammography is still a manual process, prone to human errors which result in unnecessary costs on both the patient and medical institute which may lead to loss of life. In this paper, we developed a prototype cost-effective predictive mammogram classification model for breast cancer diagnosis using Deep Learning Studio performing data augmentation, transfer learning and careful data preprocessing. The resulting prototype model was trained on a publicly available In-breast dataset and achieve above human-level performance on the classification of mammograms. Finally, it is worth noting that the experiments we performed showed some degree of confidence that our prototype could improve the currently used methods for predictive mammogram classification.

Iaith wreiddiolSaesneg
Teitl2021 3rd International Multidisciplinary Information Technology and Engineering Conference, IMITEC 2021
CyhoeddwrInstitute of Electrical and Electronics Engineers Inc.
ISBN (Electronig)9781665417495
Dynodwyr Gwrthrych Digidol (DOIs)
StatwsCyhoeddwyd - 25 Tach 2021
Cyhoeddwyd yn allanolIe
Digwyddiad3rd International Multidisciplinary Information Technology and Engineering Conference, IMITEC 2021 - Windhoek, Namibia
Hyd: 23 Tach 202125 Tach 2021

Cyfres gyhoeddiadau

Enw2021 3rd International Multidisciplinary Information Technology and Engineering Conference, IMITEC 2021

Cynhadledd

Cynhadledd3rd International Multidisciplinary Information Technology and Engineering Conference, IMITEC 2021
Gwlad/TiriogaethNamibia
DinasWindhoek
Cyfnod23/11/2125/11/21

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