Addressing Uncertainty in Imbalanced Histopathology Image Classification
of HER2 Breast Cancer: An interpretable Ensemble Approach with Threshold
Filtered Single Instance Evaluation (SIE)
- URL: http://arxiv.org/abs/2308.00806v2
- Date: Fri, 27 Oct 2023 00:58:35 GMT
- Title: Addressing Uncertainty in Imbalanced Histopathology Image Classification
of HER2 Breast Cancer: An interpretable Ensemble Approach with Threshold
Filtered Single Instance Evaluation (SIE)
- Authors: Md Sakib Hossain Shovon, M. F. Mridha, Khan Md Hasib, Sultan
Alfarhood, Mejdl Safran, and Dunren Che
- Abstract summary: Early diagnosis can alleviate the mortality rate by helping patients make efficient treatment decisions.
HER2 has become one the most lethal subtype of Breast Cancer.
DenseNet201 and Xception have been ensembled into a single classifier.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Breast Cancer (BC) is among women's most lethal health concerns. Early
diagnosis can alleviate the mortality rate by helping patients make efficient
treatment decisions. Human Epidermal Growth Factor Receptor (HER2) has become
one the most lethal subtype of BC. According to the College of American
Pathologists American Society of Clinical Oncology (CAP/ASCO), the severity
level of HER2 expression can be classified between 0 and 3+ range. HER2 can be
detected effectively from immunohistochemical (IHC) and, hematoxylin & eosin
(HE) images of different classes such as 0, 1+, 2+, and 3+. An ensemble
approach integrated with threshold filtered single instance evaluation (SIE)
technique has been proposed in this study to diagnose BC from the
multi-categorical expression of HER2 subtypes. Initially, DenseNet201 and
Xception have been ensembled into a single classifier as feature extractors
with an effective combination of global average pooling, dropout layer, dense
layer with a swish activation function, and l2 regularizer, batch
normalization, etc. After that, extracted features has been processed through
single instance evaluation (SIE) to determine different confidence levels and
adjust decision boundary among the imbalanced classes. This study has been
conducted on the BC immunohistochemical (BCI) dataset, which is classified by
pathologists into four stages of HER2 BC. This proposed approach known as
DenseNet201-Xception-SIE with a threshold value of 0.7 surpassed all other
existing state-of-art models with an accuracy of 97.12%, precision of 97.15%,
and recall of 97.68% on H&E data and, accuracy of 97.56%, precision of 97.57%,
and recall of 98.00% on IHC data respectively, maintaining momentous
improvement. Finally, Grad-CAM and Guided Grad-CAM have been employed in this
study to interpret, how TL-based model works on the histopathology dataset and
make decisions from the data.
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