Artificial Neural Network Prediction of Mortality in Cancer Patients Presenting for Radiation Therapy at a Multisite Institution.

ai artificial intelligence machine learning mortality oncology prediction radiation

Journal

Cureus
ISSN: 2168-8184
Titre abrégé: Cureus
Pays: United States
ID NLM: 101596737

Informations de publication

Date de publication:
Jul 2024
Historique:
accepted: 14 07 2024
medline: 16 7 2024
pubmed: 16 7 2024
entrez: 16 7 2024
Statut: epublish

Résumé

For many decades, the management of cancer has utilized radiation therapy, which continues to evolve with technology to improve patient outcomes. However, despite the standardization of treatment plans and the establishment of best clinical practices based on prospective, randomized trials and adherence to National Comprehensive Cancer Network (NCCN) guidelines, the outcomes from radiation therapy are highly variable and dependent on a number of factors, including patient demographics, tumor characteristics/histology, and treatment parameters. In this study, we attempt to use available patient data and treatment parameters at the time of radiation therapy to predict future outcomes using artificial intelligence (AI). Six thousand five hundred ninety-five cases of patients who completed radiation treatment were selected retrospectively and used to train artificial neural networks (ANNs) and baseline models (i.e., logistic regression, random forest, support vector machines [SVMs], gradient boosting [XGBoost]) for binary classification of mortality at multiple time points ranging from six months to five years post-treatment. A hyperparameter grid search was used to identify the optimal network architecture for each time point, using sensitivity as the primary outcome metric. The median age was 75 years (range: 2-102 years). There were 63.8% females and 36.1% males. The results indicate that ANNs were able to successfully perform binary mortality prediction with an accuracy greater than random chance and greater sensitivity than baseline models used. The best-performing algorithm was the ANN, which achieved a sensitivity of 83.00% ± 4.89% for five-year mortality. The neural network was able to achieve higher sensitivity than Logistic Regression, SVM Random Forest, and XGBoost across all output target variables, demonstrating the utility of a neural network model for mortality prediction on the provided dataset.

Identifiants

pubmed: 39011317
doi: 10.7759/cureus.64536
pmc: PMC11247042
doi:

Types de publication

Journal Article

Langues

eng

Pagination

e64536

Informations de copyright

Copyright © 2024, Shahrabani et al.

Déclaration de conflit d'intérêts

Human subjects: Consent was obtained or waived by all participants in this study. Animal subjects: All authors have confirmed that this study did not involve animal subjects or tissue. Conflicts of interest: In compliance with the ICMJE uniform disclosure form, all authors declare the following: Payment/services info: All authors have declared that no financial support was received from any organization for the submitted work. Financial relationships: All authors have declared that they have no financial relationships at present or within the previous three years with any organizations that might have an interest in the submitted work. Other relationships: All authors have declared that there are no other relationships or activities that could appear to have influenced the submitted work.

Auteurs

Elan Shahrabani (E)

Department of Radiation Oncology, Northwell/Donald and Barbara Zucker School of Medicine at Hofstra, New Hyde Park, USA.

Michael Shen (M)

Department of Radiation Oncology, Northwell/Donald and Barbara Zucker School of Medicine at Hofstra, New Hyde Park, USA.

Yen-Ruh Wuu (YR)

Department of Radiation Oncology, Northwell/Donald and Barbara Zucker School of Medicine at Hofstra, New Hyde Park, USA.

Louis Potters (L)

Department of Radiation Oncology, Northwell/Donald and Barbara Zucker School of Medicine at Hofstra, New Hyde Park, USA.

Bhupesh Parashar (B)

Department of Radiation Oncology, Northwell/Donald and Barbara Zucker School of Medicine at Hofstra, New Hyde Park, USA.

Classifications MeSH