A mishap in anti-cancer drug distribution is critical in breast cancer patients due to poor prediction model to identify the treatment regime in ER+ve and ER-ve (Estrogen Receptor (ER)) patients. The traditional method for the prediction depends on the change in expression across the normal-disease pair. However, it certainly misses the multidimensional aspect and underlying cause of relapse, such as various mutations, drug dosage side effects, methylation, etc. In this paper, we have developed a multi-layer neural network model to classify multidimensional genomics data into their similar annotation group. Further, we used this multi-layer cancer genomics perceptron for annotating differentially expressed genes (DEGs) to predict relapse ba...
Prediction of response to specific cancer treatments is complicated by significant heterogeneity bet...
The application of machine learning methods to challenges in medicine, with the hope of enabling pre...
This repository contains preprocessed data files and trained model files associated with the manuscr...
A mishap in anti-cancer drug distribution is critical in breast cancer patients due to poor predicti...
Abstract Background The study of high-throughput genomic profiles from a pharmacogenomics viewpoint ...
Purpose: In breast cancer medical follow-up, due to the lack of specialized aided diagnosis tools, m...
Background: Prediction of clinical outcomes for individual cancer patients is an important step in t...
Cancer is a concerning disease for many people nowadays because of its high mortality rate and its h...
The treatment of patients with ERBB2 (HER2)-positive breast cancer with anti-ERBB2 therapy is based ...
ObjectivesTo apply deep learning algorithms using a conventional convolutional neural network (CNN) ...
The current standard of care for many patients with HER2-positive breast cancer is neoadjuvant chemo...
Predicting progression and deciding on the best follow-up techniques for breast cancer patients is d...
Purpose: Neoadjuvant chemotherapy (NAC) aims to minimize the tumor size before surgery. Predicting r...
Breast cancer patients who have pathological complete response (pCR) to neoadjuvant chemotherapy (NA...
Prediction of response to specific cancer treatments is complicated by significant heterogeneity bet...
Prediction of response to specific cancer treatments is complicated by significant heterogeneity bet...
The application of machine learning methods to challenges in medicine, with the hope of enabling pre...
This repository contains preprocessed data files and trained model files associated with the manuscr...
A mishap in anti-cancer drug distribution is critical in breast cancer patients due to poor predicti...
Abstract Background The study of high-throughput genomic profiles from a pharmacogenomics viewpoint ...
Purpose: In breast cancer medical follow-up, due to the lack of specialized aided diagnosis tools, m...
Background: Prediction of clinical outcomes for individual cancer patients is an important step in t...
Cancer is a concerning disease for many people nowadays because of its high mortality rate and its h...
The treatment of patients with ERBB2 (HER2)-positive breast cancer with anti-ERBB2 therapy is based ...
ObjectivesTo apply deep learning algorithms using a conventional convolutional neural network (CNN) ...
The current standard of care for many patients with HER2-positive breast cancer is neoadjuvant chemo...
Predicting progression and deciding on the best follow-up techniques for breast cancer patients is d...
Purpose: Neoadjuvant chemotherapy (NAC) aims to minimize the tumor size before surgery. Predicting r...
Breast cancer patients who have pathological complete response (pCR) to neoadjuvant chemotherapy (NA...
Prediction of response to specific cancer treatments is complicated by significant heterogeneity bet...
Prediction of response to specific cancer treatments is complicated by significant heterogeneity bet...
The application of machine learning methods to challenges in medicine, with the hope of enabling pre...
This repository contains preprocessed data files and trained model files associated with the manuscr...