Prediction of bacterial and fungal bloodstream infections using machine learning in patients undergoing chemotherapy

Imagem de Miniatura

Autores

Freire, Maristela P.
Lazar Neto, Felippe
Lage, Luis Alberto De Padua Covas
Oliveira, Maura Salaroli
Abdala, Edson
Nunes, Fatima L.S.
Levin, Anna Sara S.

Orientador

Co-orientadores

Citações na Scopus

Tipo de documento

Artigo Científico

Data

2025

Unidades Organizacionais

Resumo

Purpose This study aimed to develop a machine learning (ML) model to predict bloodstream infection (BSI) in chemotherapy patients. Patients and methods We included all cancer patients undergoing chemotherapy at a tertiary cancer hospital from 2017 to 2022. Data were collected per chemotherapy cycle, including chemotherapy drugs, indications, cycle number, cancer type, body mass index, age, gender, complete blood count, creatinine levels, and microbial cultures. BSI was assessed within 21 days after chemotherapy. The ML algorithms tested included logistic regression, ridge regression, k-nearest neighbors, Naive Bayes, Perceptron, neural networks, decision trees, boosting methods, Random Forests, and Support Vector Machines. The SHapley Additive exPlanations (SHAP) method was used to measure feature importance. Results Among 107,757 cycles from 19,225 patients, 91.7 % had solid tumors, primarily breast (36.8 %) and gastrointestinal (19.4 %) cancers. The first cycle accounted for 23.7 % of cycles, and palliative chemotherapy made up 52.9 %. Alkylating agent was the most common drug class used (55.5 %). BSI occurred in 1.33 % of cycles, with 34 % of these cases occurring in neutropenic patients. Of the bacteremia cases, 11.8 % were polymicrobial, and 69.3 % involved gram-negative bacteria. The best model was a neural network with one hidden layer (5 neurons), achieving 70.7 % sensitivity, 93.49 % specificity, 93.19 % accuracy, and an area under a receiver operating characteristic curve of 91.93 %. Key predictors included the first cycle, antimetabolite use, palliative chemotherapy, monocytopenia, and hematological malignancies. Conclusion ML effectively predicts bacteremia in chemotherapy patients, including non-neutropenic cases, and could be used in clinical practice to guide treatment and infection workup.

Palavras-chave

Enterobacterales; Solid tumor; Monocytopenia; Predictive modeling; Leukemia

Titulo de periódico

European Journal of Cancer
DOI

Título de Livro

URL na Scopus

Sinopse

Objetivos de aprendizagem

Idioma

Inglês

Notas

Membros da banca

Área do Conhecimento CNPQ

CIENCIAS DA SAUDE

CIENCIAS DA SAUDE::MEDICINA

CIENCIAS DA SAUDE::MEDICINA::CLINICA MEDICA::CANCEROLOGIA

Citação

Avaliação

Revisão

Suplementado Por

Referenciado Por