Transcriptomic signature of cancer cachexia by integration of machine learning, literature mining and meta-analysis

被引:2
|
作者
Zhao K. [1 ,2 ]
Ebrahimie E. [3 ,4 ,5 ]
Mohammadi-Dehcheshmeh M. [3 ,4 ]
Lewsey M.G. [6 ,7 ,8 ]
Zheng L. [1 ]
Hoogenraad N.J. [2 ,9 ]
机构
[1] Department of Laboratory Medicine, Nanfang Hospital, Southern Medical University, Guangzhou
[2] La Trobe Institute for Molecular Science, La Trobe University, Melbourne, 3086, VIC
[3] Genomics Research Platform, School of Agriculture, Biomedicine and Environment, La Trobe University, Melbourne, 3086, VIC
[4] School of Animal and Veterinary Science, The University of Adelaide, Adelaide, 5371, SA
[5] School of BioSciences, The University of Melbourne, Melbourne, 3010, VIC
[6] Australian Research Council Research Hub for Medicinal Agriculture, La Trobe University, AgriBio Building, Bundoora, 3086, VIC
[7] La Trobe Institute for Sustainable Agriculture and Food, Department of Plant, Animal and Soil Sciences, La Trobe University, AgriBio Building, Bundoora, 3086, VIC
[8] Australian Research Council Centre of Excellence in Plants for Space, AgriBio Building, La Trobe University, Bundoora, 3086, VIC
[9] Tumour Targeting Laboratory, Olivia Newton-John Cancer Research Institute, School of Cancer Medicine, La Trobe University, Melbourne, 3084, VIC
基金
中国国家自然科学基金;
关键词
Cancer cachexia; Drug discovery; Literature mining; Machine learning; Transcriptomics;
D O I
10.1016/j.compbiomed.2024.108233
中图分类号
学科分类号
摘要
Background: Cancer cachexia is a severe metabolic syndrome marked by skeletal muscle atrophy. A successful clinical intervention for cancer cachexia is currently lacking. The study of cachexia mechanisms is largely based on preclinical animal models and the availability of high-throughput transcriptomic datasets of cachectic mouse muscles is increasing through the extensive use of next generation sequencing technologies. Methods: Cachectic mouse muscle transcriptomic datasets of ten different studies were combined and mined by seven attribute weighting models, which analysed both categorical variables and numerical variables. The transcriptomic signature of cancer cachexia was identified by attribute weighting algorithms and was used to evaluate the performance of eleven pattern discovery models. The signature was employed to find the best combination of drugs (drug repurposing) for developing cancer cachexia treatment strategies, as well as to evaluate currently used cachexia drugs by literature mining. Results: Attribute weighting algorithms ranked 26 genes as the transcriptomic signature of muscle from mice with cancer cachexia. Deep Learning and Random Forest models performed better in differentiating cancer cachexia cases based on muscle transcriptomic data. Literature mining revealed that a combination of melatonin and infliximab has negative interactions with 2 key genes (Rorc and Fbxo32) upregulated in the transcriptomic signature of cancer cachexia in muscle. Conclusions: The integration of machine learning, meta-analysis and literature mining was found to be an efficient approach to identifying a robust transcriptomic signature for cancer cachexia, with implications for improving clinical diagnosis and management of this condition. © 2024 The Authors
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