Publications by authors named "Anush Karampuri"

Article Synopsis
  • - Breast cancer is a major cause of death in women, and issues like drug resistance due to genetic mutations complicate treatment; ResisenseNet is introduced as a solution that predicts drug sensitivity and resistance.
  • - The model combines various methods, including a hybrid of 1D-CNN, LSTM, and DNN architectures, achieving a high validation accuracy of 0.9794 and showing effectiveness in analyzing transcription factors and amino acid sequences.
  • - ResisenseNet has been tested on 14 cancers, highlighting certain drugs with potential against breast cancer, and found novel options with no previous anticancer activity, pointing to new treatment methods and improved strategies against drug resistance.
View Article and Find Full Text PDF

Breast cancer, a highly formidable and diverse malignancy predominantly affecting women globally, poses a significant threat due to its intricate genetic variability, rendering it challenging to diagnose accurately. Various therapies such as immunotherapy, radiotherapy, and diverse chemotherapy approaches like drug repurposing and combination therapy are widely used depending on cancer subtype and metastasis severity. Our study revolves around an innovative drug discovery strategy targeting potential drug candidates specific to RTK signalling, a prominently targeted receptor class in cancer.

View Article and Find Full Text PDF

Breast cancer is the most prevalent and heterogeneous form of cancer affecting women worldwide. Various therapeutic strategies are in practice based on the extent of disease spread, such as surgery, chemotherapy, radiotherapy, and immunotherapy. Combinational therapy is another strategy that has proven to be effective in controlling cancer progression.

View Article and Find Full Text PDF