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Prediction of Radiation Pneumonitis With Machine Learning in Stage III Lung Cancer: A Pilot Study

Melek Yakar, Durmuş Etiz, Muzaffer Metintaş, Güntülü Ak, Özer Çelik

2021Technology in Cancer Research & Treatment42 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Radiation pneumonitis (RP) is a dose-limiting toxicity in lung cancer radiotherapy (RT). As risk factors in the development of RP, patient and tumor characteristics, dosimetric parameters, and treatment features are intertwined, and it is not always possible to associate RP with a single parameter. This study aimed to determine the algorithm that most accurately predicted RP development with machine learning. METHODS: Of the 197 cases diagnosed with stage III lung cancer and underwent RT and chemotherapy between 2014 and 2020, 193 were evaluated. The CTCAE 5.0 grading system was used for the RP evaluation. Synthetic minority oversampling technique was used to create a balanced data set. Logistic regression, artificial neural networks, eXtreme Gradient Boosting (XGB), Support Vector Machines, Random Forest, Gaussian Naive Bayes and Light Gradient Boosting Machine algorithms were used. After the correlation analysis, a permutation-based method was utilized for as a variable selection. RESULTS: , gross tumor volume, number of chemotherapy cycles before RT, tumor size, lymph node localization and asbestos exposure. LGBM was found to be the algorithm that best predicted RP at 85% accuracy (confidence interval: 0.73-0.96), 97% sensitivity, and 50% specificity. CONCLUSION: When the clinical and dosimetric parameters were evaluated together, the LGBM algorithm had the highest accuracy in predicting RP. However, in order to use this algorithm in clinical practice, it is necessary to increase data diversity and the number of patients by sharing data between centers.

Topics & Concepts

Lung cancerRadiation therapyAlgorithmMedicineDose-volume histogramRandom forestConfidence intervalGradient boostingRadiation treatment planningNuclear medicineMachine learningArtificial intelligenceMathematicsComputer scienceRadiologyOncologyInternal medicineEffects of Radiation ExposureLung Cancer Diagnosis and TreatmentRadiomics and Machine Learning in Medical Imaging