De Novo Pathway-Based Classification of Breast Cancer Subtypes

Author(s):  
Markus List ◽  
Nicolas Alcaraz ◽  
Richa Batra
2021 ◽  
Author(s):  
Forough Firoozbakht ◽  
Iman Rezaeian ◽  
Luis Rueda ◽  
Alioune Ngom

Abstract 'De novo' drug discovery is costly, slow, and with high risk. Repurposing known drugs for treatment of other diseases offers a fast, low-cost/risk and highly-efficient method toward development of efficacious treatments. The emergence of large-scale heterogeneous biomolecular networks, molecular, chemical and bioactivity data, and genomic and phenotypic data of pharmacological compounds is enabling the development of new area of drug repurposing called 'in silico' drug repurposing, i.e., computational drug repurposing (CDR). The aim of CDR is to discover new indications for an existing drug (drug-centric) or to identify effective drugs for a disease (disease-centric). Both drug-centric and disease-centric approaches have the common challenge of either assessing the similarity or connections between drugs and diseases. However, traditional CDR is fraught with many challenges due to the underlying complex pharmacology and biology of diseases, genes, and drugs, as well as the complexity of their associations. As such, capturing highly non-linear associations among drugs, genes, diseases by most existing CDR methods has been challenging.We propose a network-based integration approach that can best capture knowledge (and complex relationships) contained within and between drugs, genes and disease data. A network-based machine learning approach is applied thereafter by using the extracted knowledge and relationships in order to identify single and pair of approved or experimental drugs with potential therapeutic effects on different breast cancer subtypes.


Author(s):  
Firat Ismailoglu ◽  
Rachel Cavill ◽  
Evgueni Smirnov ◽  
Shuang Zhou ◽  
Pieter Collins ◽  
...  

10.2741/4566 ◽  
2017 ◽  
Vol 22 (10) ◽  
pp. 1697-1712 ◽  
Author(s):  
Alex Graudenzi

Author(s):  
Pasquale Simeone ◽  
Stefano Tacconi ◽  
Serena Longo ◽  
Paola Lanuti ◽  
Sara Bravaccini ◽  
...  

In recent years, lipid metabolism has gained greater attention in several diseases including cancer. Dysregulation of fatty acid metabolism is a key component in breast cancer malignant transformation. In particular, de novo lipogenesis provides the substrate required by the proliferating tumor cells to maintain their membrane composition and energetic functions during enhanced growth. However, it appears that not all breast cancer subtypes depend on de novo lipogenesis for fatty acid replenishment. Indeed, while breast cancer luminal subtypes rely on de novo lipogenesis, the basal-like receptor-negative subtype overexpresses genes involved in the utilization of exogenous-derived fatty acids, in the synthesis of triacylglycerols and lipid droplets, and fatty acid oxidation. These metabolic differences are specifically associated with genomic and proteomic changes that can perturb lipogenic enzymes and related pathways. This behavior is further supported by the observation that breast cancer patients can be stratified according to their molecular profiles. Moreover, the discovery that extracellular vesicles act as a vehicle of metabolic enzymes and oncometabolites may provide the opportunity to noninvasively define tumor metabolic signature. Here, we focus on de novo lipogenesis and the specific differences exhibited by breast cancer subtypes and examine the functional contribution of lipogenic enzymes and associated transcription factors in the regulation of tumorigenic processes.


2015 ◽  
Vol 26 ◽  
pp. iii15
Author(s):  
H.H. Milioli ◽  
I. Tishchenko ◽  
C. Riveros ◽  
R. Berretta ◽  
P. Moscato

2021 ◽  
Vol 4 (1) ◽  
Author(s):  
Chia-Hsin Wu ◽  
Chia-Shan Hsieh ◽  
Yo-Cheng Chang ◽  
Chi-Cheng Huang ◽  
Hsien-Tang Yeh ◽  
...  

AbstractWhole-genome doubling (WGD) is an early macro-evolutionary event in tumorigenesis, involving the doubling of an entire chromosome complement. However, its impact on breast cancer subtypes remains unclear. Here, we performed a comprehensive and quantitative analysis of WGD and its influence on breast cancer subtypes in patients from Taiwan and consequently highlight the genomic association between WGD and homologous recombination deficiency (HRD). A higher manifestation of WGD was reported in triple-negative breast cancer, conferring high chromosomal instability (CIN), while HER2 + tumors exhibited early WGD events, with widely varied CIN levels, compared to luminal-type tumors. An association of higher activity of de novo indel signature 2 with WGD and HRD in Taiwanese breast cancer patients was reported. A control test between WGD and pseudo non-WGD samples was further employed to support this finding. The study provides a better comprehension of tumorigenesis in breast cancer subtypes, thus assisting in personalized treatment.


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