Artículo de revista
Total mutational load and clinical features as predictors of the metastatic status in lung adenocarcinoma and squamous cell carcinoma patients
Fecha
2022Registro en:
Journal of Translational Medicine (2022) 20:373
10.1186/s12967-022-03572-8
Autor
Oróstica Tapia, Karen Yasmine
Sáez Hidalgo, Juan Manuel
Santiago, Pamela R. de
Rivas, Solange
Contreras, Sebastián
Navarro, Gonzalo
Asenjo de Leuze de Lancizolle, Juan
Olivera Nappa, Álvaro María
Armisen Yáñez, Ricardo Amado
Institución
Resumen
Background: Recently, extensive cancer genomic studies have revealed mutational and clinical data of large cohorts of cancer patients. For example, the Pan‑Lung Cancer 2016 dataset (part of The Cancer Genome Atlas project), sum‑ marises the mutational and clinical profiles of different subtypes of Lung Cancer (LC). Mutational and clinical signa‑ tures have been used independently for tumour typification and prediction of metastasis in LC patients. Is it then possible to achieve better typifications and predictions when combining both data streams? Methods: In a cohort of 1144 Lung Adenocarcinoma (LUAD) and Lung Squamous Cell Carcinoma (LSCC) patients, we studied the number of missense mutations (hereafter, the Total Mutational Load TML) and distribution of clinical variables, for different classes of patients. Using the TML and different sets of clinical variables (tumour stage, age, sex, smoking status, and packs of cigarettes smoked per year), we built Random Forest classification models that calculate the likelihood of developing metastasis. Results: We found that LC patients different in age, smoking status, and tumour type had significantly different mean TMLs. Although TML was an informative feature, its effect was secondary to the "tumour stage" feature. However, its contribution to the classification is not redundant with the latter; models trained using both TML and tumour stage performed better than models trained using only one of these variables. We found that models trained in the entire dataset (i.e., without using dimensionality reduction techniques) and without resampling achieved the highest perfor‑ mance, with an F1 score of 0.64 (95%CrI [0.62, 0.66]). Conclusions: Clinical variables and TML should be considered together when assessing the likelihood of LC patients progressing to metastatic states, as the information these encode is not redundant. Altogether, we provide new evi‑ dence of the need for comprehensive diagnostic tools for metastasis.