2022
DOI: 10.21608/jocc.2022.218453
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The Impact of Data processing and Ensemble on Breast Cancer Detection Using Deep Learning

Abstract: According to the World Health Organization, cancer is the second leading cause of mortality. Breast cancer is the most prevalent cancer diagnosed in women around the world. Breast cancer diagnostics range from mammograms to CT scans and ultrasounds, but a biopsy is the only way to know for sure if the suspicious cells detected in the breast are cancerous or not. This paper's main contribution is multi-fold. First, it proposes a deep learning approach to detect breast cancer from biopsy microscopy images. Deep … Show more

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Cited by 29 publications
(3 citation statements)
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“…Spam spread, phishing, malware dissemination, and cyberbullying are all examples of aggressive conduct. Due to the fact that social networking sites provide users the freedom to publish on their services, textual cyberbullying has been the most common hostile conduct [26][27][28].…”
Section: Related Workmentioning
confidence: 99%
“…Spam spread, phishing, malware dissemination, and cyberbullying are all examples of aggressive conduct. Due to the fact that social networking sites provide users the freedom to publish on their services, textual cyberbullying has been the most common hostile conduct [26][27][28].…”
Section: Related Workmentioning
confidence: 99%
“…The attribute "diagnosis" has been denoted as the class label that classifies the tumor as Malignant (M) and Benign (B). In the literature, the majority of the papers worked on unstructured data for Breast cancer like mammograms [42], [43]. • Z-Alizadehsani Dataset: The data was collected from heart disease patients at Shaheed Rajaei Cardiovascu- lar, Medical, and Research Center, Tehran, Iran.…”
Section: A Datasetsmentioning
confidence: 99%
“…The use of pre-trained language models has also been explored for hate speech detection. Like [28] proposed a BERT-based model for detecting hate speech on social media platforms, demonstrating superior performance compared to traditional machine learning techniques. Similarly, [29] employed BERT for detecting hate speech on Twitter, highlighting the model's ability to capture the complex semantics of text and adapt to various linguistic contexts.…”
Section: Hybrid Approaches and Ensemble Modelsmentioning
confidence: 99%