Over the past two decades, extensive studies, particularly in cancer analysis through large datasets like The Cancer Genome Atlas (TCGA), have aimed at improving patient therapies and precision medicine. However, limited overlap and inconsistencies among gene signatures across different cohorts pose challenges. The dynamic nature of the transcriptome, encompassing diverse RNA species and functional complexities at gene and isoform levels, introduces intricacies, and current gene signatures face reproducibility issues due to the unique transcriptomic landscape of each patient. In this context, discrepancies arising from diverse sequencing technologies, data analysis algorithms, and software tools further hinder consistency. While careful experimental design, analytical strategies, and standardized protocols could enhance reproducibility, future prospects lie in multiomics data integration, machine learning techniques, open science practices, and collaborative efforts. Standardized metrics, quality control measures, and advancements in single-cell RNA-seq will contribute to unbiased gene signature identification. In this perspective article, we outline some thoughts and insights addressing challenges, standardized practices, and advanced methodologies enhancing the reliability of gene signatures in disease transcriptomic research.

Liu, W., He, H., Chicco, D. (2024). Gene signatures for cancer research: A 25-year retrospective and future avenues. PLOS COMPUTATIONAL BIOLOGY, 20(10) [10.1371/journal.pcbi.1012512].

Gene signatures for cancer research: A 25-year retrospective and future avenues

Chicco D.
Ultimo
2024

Abstract

Over the past two decades, extensive studies, particularly in cancer analysis through large datasets like The Cancer Genome Atlas (TCGA), have aimed at improving patient therapies and precision medicine. However, limited overlap and inconsistencies among gene signatures across different cohorts pose challenges. The dynamic nature of the transcriptome, encompassing diverse RNA species and functional complexities at gene and isoform levels, introduces intricacies, and current gene signatures face reproducibility issues due to the unique transcriptomic landscape of each patient. In this context, discrepancies arising from diverse sequencing technologies, data analysis algorithms, and software tools further hinder consistency. While careful experimental design, analytical strategies, and standardized protocols could enhance reproducibility, future prospects lie in multiomics data integration, machine learning techniques, open science practices, and collaborative efforts. Standardized metrics, quality control measures, and advancements in single-cell RNA-seq will contribute to unbiased gene signature identification. In this perspective article, we outline some thoughts and insights addressing challenges, standardized practices, and advanced methodologies enhancing the reliability of gene signatures in disease transcriptomic research.
Articolo in rivista - Articolo scientifico
Computational Biology; Gene Expression Profiling; Humans; Machine Learning; Neoplasms; Reproducibility of Results; Retrospective Studies; Transcriptome
English
16-ott-2024
2024
20
10
e1012512
open
Liu, W., He, H., Chicco, D. (2024). Gene signatures for cancer research: A 25-year retrospective and future avenues. PLOS COMPUTATIONAL BIOLOGY, 20(10) [10.1371/journal.pcbi.1012512].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/529008
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