Background: Machine learning models learn about general behavior from data by finding the relationships between features. Our purpose was to develop a predictive model to identify and predict which subset of colorectal cancer patients are more likely to experience chemotherapy-induced toxicity and to determine the specific attributes that influence the presence of treatment-related side effects. Methods: The predictor was general toxicity, and for the construction of our data training, we selected 95 characteristics that represent the health state of 74 patients prior to their first round of chemotherapy. After the data were processed, Random Forest models were trained to offer an optimal balance between accuracy and interpretability. Results: We constructed a machine learning predictor with an emphasis on assessing the importance of numerical and categorical variables in relation to toxicity. Conclusions: The incorporation of artificial intelligence in personalizing colorectal cancer management by anticipating and overseeing toxicities more effectively illustrates a pivotal shift towards more personalized and precise medical care.

Froicu, E., Oniciuc, O., Afrăsânie, V., Marinca, M., Riondino, S., Dumitrescu, E.a., et al. (2024). The Use of Artificial Intelligence in Predicting Chemotherapy-Induced Toxicities in Metastatic Colorectal Cancer: A Data-Driven Approach for Personalized Oncology. DIAGNOSTICS, 14(18) [10.3390/diagnostics14182074].

The Use of Artificial Intelligence in Predicting Chemotherapy-Induced Toxicities in Metastatic Colorectal Cancer: A Data-Driven Approach for Personalized Oncology

Riondino, Silvia;
2024-09-19

Abstract

Background: Machine learning models learn about general behavior from data by finding the relationships between features. Our purpose was to develop a predictive model to identify and predict which subset of colorectal cancer patients are more likely to experience chemotherapy-induced toxicity and to determine the specific attributes that influence the presence of treatment-related side effects. Methods: The predictor was general toxicity, and for the construction of our data training, we selected 95 characteristics that represent the health state of 74 patients prior to their first round of chemotherapy. After the data were processed, Random Forest models were trained to offer an optimal balance between accuracy and interpretability. Results: We constructed a machine learning predictor with an emphasis on assessing the importance of numerical and categorical variables in relation to toxicity. Conclusions: The incorporation of artificial intelligence in personalizing colorectal cancer management by anticipating and overseeing toxicities more effectively illustrates a pivotal shift towards more personalized and precise medical care.
19-set-2024
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore MED/06
Settore MEDS-09/A - Oncologia medica
English
artificial intelligence
chemotherapy toxicity
metastatic colorectal cancer
prediction model
Froicu, E., Oniciuc, O., Afrăsânie, V., Marinca, M., Riondino, S., Dumitrescu, E.a., et al. (2024). The Use of Artificial Intelligence in Predicting Chemotherapy-Induced Toxicities in Metastatic Colorectal Cancer: A Data-Driven Approach for Personalized Oncology. DIAGNOSTICS, 14(18) [10.3390/diagnostics14182074].
Froicu, E; Oniciuc, O; Afrăsânie, V; Marinca, M; Riondino, S; Dumitrescu, Ea; Alexa-Stratulat, T; Radu, I; Miron, L; Bacoanu, G; Poroch, V; Gafton, ...espandi
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/446363
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