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What are the current trends in breast cancer research? 


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Breast cancer research trends include the analysis of breast cancer susceptibility genes (BRCA) and their role in the incidence and development of breast cancer . The study of molecular biology and characteristics of breast cancer is another focus area, including cell growth and proliferation pathways, germline mutations, and invasive and metastatic factors . Targeted therapies, such as poly(ADP-ribose) polymerase (PARP) inhibitors, are being investigated for breast cancer treatment . Computer-aided diagnosis (CAD) systems based on convolutional neural networks (CNN) are being developed to improve breast cancer image screening and diagnosis . Computational approaches, including artificial intelligence and bioinformatics, are being used to analyze breast cancer prediction, diagnostics, treatment, and drug discovery .

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The provided paper discusses the recent trend of using convolutional neural networks (CNN) for breast cancer diagnosis in computer-aided diagnosis (CAD) systems.
The paper discusses the progress in breast cancer research, including the identification of various targets and pathways involved in breast cancer development and the synthesis of inhibitors for breast cancer therapy.

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