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The Needs and Benefits of Continuous Model Updates on the Accuracy of RT-Induced Toxicity Prediction Models Within a Learning Health System.
- Source :
-
International journal of radiation oncology, biology, physics [Int J Radiat Oncol Biol Phys] 2019 Feb 01; Vol. 103 (2), pp. 460-467. Date of Electronic Publication: 2018 Oct 06. - Publication Year :
- 2019
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Abstract
- Purpose: Clinical data collection and development of outcome prediction models by machine learning can form the foundation for a learning health system offering precision radiation therapy. However, changes in clinical practice over time can affect the measures and patient outcomes and, hence, the collected data. We hypothesize that regular prediction model updates and continuous prospective data collection are important to prevent the degradation of a model's predication accuracy.<br />Methods and Materials: Clinical and dosimetric data from head and neck patients receiving intensity modulated radiation therapy from 2008 to 2015 were prospectively collected as a routine clinical workflow and anonymized for this analysis. Prediction models for grade ≥2 xerostomia at 3 to 6 months of follow-up were developed by bivariate logistic regression using the dose-volume histogram of parotid and submandibular glands. A baseline prediction model was developed with a training data set from 2008 to 2009. The selected predictor variables and coefficients were updated by 4 different model updating methods. (A) The prediction model was updated by using only recent 2-year data and applied to patients in the following test year. (B) The model was updated by increasing the training data set yearly. (C) The model was updated by increasing the training data set on the condition that the area under the curve (AUC) of the recent test year was less than 0.6. (D) The model was not updated. The AUC of the test data set was compared among the 4 model updating methods.<br />Results: Dose to parotid and submandibular glands and grade of xerostomia showed decreasing trends over the years (2008-2015, 297 patients; P < .001). The AUC of predicting grade ≥2 xerostomia for the initial training data set (2008-2009, 41 patients) was 0.6196. The AUC for the test data set (2010-2015, 256 patients) decreased to 0.5284 when the initial model was not updated (D). However, the AUC was significantly improved by model updates (A: 0.6164; B: 0.6084; P < .05). When the model was conditionally updated, the AUC was 0.6072 (C).<br />Conclusions: Our preliminary results demonstrate that updating prediction models with prospective data collection is effective for maintaining the performance of xerostomia prediction. This suggests that a machine learning framework can handle the dynamic changes in a radiation oncology clinical practice and may be an important component for the construction of a learning health system.<br /> (Copyright © 2018 Elsevier Inc. All rights reserved.)
- Subjects :
- Adolescent
Adult
Aged
Aged, 80 and over
Area Under Curve
Data Collection
Female
Humans
Machine Learning
Male
Middle Aged
Parotid Gland radiation effects
Prospective Studies
Radiometry
Radiotherapy Dosage
Radiotherapy, Conformal
Radiotherapy, Intensity-Modulated methods
Reproducibility of Results
Submandibular Gland radiation effects
Xerostomia etiology
Young Adult
Head and Neck Neoplasms radiotherapy
Radiotherapy adverse effects
Radiotherapy methods
Radiotherapy, Intensity-Modulated adverse effects
Subjects
Details
- Language :
- English
- ISSN :
- 1879-355X
- Volume :
- 103
- Issue :
- 2
- Database :
- MEDLINE
- Journal :
- International journal of radiation oncology, biology, physics
- Publication Type :
- Academic Journal
- Accession number :
- 30300689
- Full Text :
- https://doi.org/10.1016/j.ijrobp.2018.09.038