2022
DOI: 10.48550/arxiv.2204.08311
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Application of Transfer Learning and Ensemble Learning in Image-level Classification for Breast Histopathology

Abstract: Background: Breast cancer has the highest prevalence in women globally. The classification and diagnosis of breast cancer and its histopathological images have always been a hot spot of clinical concern. In Computer-Aided Diagnosis (CAD), traditional classification models mostly use a single network to extract features, which has significant limitations. On the other hand, many networks are trained and optimized on patient-level datasets, ignoring the application of lower-level data labels.Method: This paper p… Show more

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“…Research to date has tended to focus on algorithm innovations rather than data enhancement. It has previously been observed that 100% accuracy can be achieved or approached in training set after continuous training with the 5-folds strategy in the BreakHis dataset [14][15][16]. The present deep convolutional network is adequate for the classification task on the BreakHis dataset [17,18].…”
Section: Introductionmentioning
confidence: 70%
“…Research to date has tended to focus on algorithm innovations rather than data enhancement. It has previously been observed that 100% accuracy can be achieved or approached in training set after continuous training with the 5-folds strategy in the BreakHis dataset [14][15][16]. The present deep convolutional network is adequate for the classification task on the BreakHis dataset [17,18].…”
Section: Introductionmentioning
confidence: 70%