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Artificial Intelligence-suggested Predictive Model of Survival in Patients Treated With Stereotactic Radiotherapy for Early Lung Cancer.

Authors :
BORGHETTI, PAOLO
COSTANTINO, GIANLUCA
SANTORO, VALERIA
MATAJ, ENEIDA
SINGH, NAVDEEP
VITALI, PAOLA
GRECO, DIANA
VOLPI, GIULIA
SEPULCRI, MATTEO
GUIDA, CESARE
TOMASI, CESARE
BUGLIONE, MICHELA
NARDONE, VALERIO
Source :
In Vivo; May/Jun2024, Vol. 38 Issue 3, p1359-1366, 8p
Publication Year :
2024

Abstract

Background/Aim: Overall survival (OS)-predictive models to clinically stratify patients with stage I Non-Small Cell Lung Cancer (NSCLC) undergoing stereotactic body radiation therapy (SBRT) are still unavailable. The aim of this work was to build a predictive model of OS in this setting. Patients and Methods: Clinical variables of patients treated in three Institutions with SBRT for stage I NSCLC were retrospectively collected into a reference cohort A (107 patients) and 2 comparative cohorts B1 (32 patients) and B2 (38 patients). A predictive model was built using Cox regression (CR) and artificial neural networks (ANN) on reference cohort A and then tested on comparative cohorts. Results: Cohort B1 patients were older and with worse chronic obstructive pulmonary disease (COPD) than cohort A. Cohort B2 patients were heavier smokers but had lower Charlson Comorbidity Index (CCI). At CR analysis for cohort A, only ECOG Performance Status 0-1 and absence of previous neoplasms correlated with better OS. The model was enhanced combining ANN and CR findings. The reference cohort was divided into prognostic Group 1 (0-2 score) and Group 2 (3-9 score) to assess model's predictions on OS: grouping was close to statistical significance (p=0.081). One and 2-year OS resulted higher for Group 1, lower for Group 2. In comparative cohorts, the model successfully predicted two groups of patients with divergent OS trends: higher for Group 1 and lower for Group 2. Conclusion: The produced model is a relevant tool to clinically stratify SBRT candidates into prognostic groups, even when applied to different cohorts. ANN are a valuable resource, providing useful data to build a prognostic model that deserves to be validated prospectively. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
0258851X
Volume :
38
Issue :
3
Database :
Complementary Index
Journal :
In Vivo
Publication Type :
Academic Journal
Accession number :
177380554
Full Text :
https://doi.org/10.21873/invivo.13576