AI Article Synopsis

  • Radiotherapy is the main treatment for nasopharyngeal carcinoma, but radiation-induced temporal lobe injury (TLI) can become irreversible if not detected early; this study aimed to create a risk-based follow-up schedule for better early detection of TLI.
  • A deep learning model was developed and tested on 6065 patients to stratify risk groups; it significantly outperformed traditional prediction methods and suggested follow-up schedules that could detect TLI 1.9 months earlier than the typical guidelines.
  • The results indicated that the model improved planning evaluations by identifying better treatment plans that reduced the risk of TLI, achieving high concordance indexes in the process.

Article Abstract

Background: Radiotherapy is the mainstay of treatment for nasopharyngeal carcinoma. Radiation-induced temporal lobe injury (TLI) can regress or resolve in the early phase, but it is irreversible at a later stage. However, no study has proposed a risk-based follow-up schedule for its early detection. Planning evaluation is difficult when dose-volume histogram (DVH) parameters are similar and optimization is terminated.

Methods: This multicenter retrospective study included 6065 patients between 2014 and 2018. A 3D ResNet-based deep learning model was developed in training and validation cohorts and independently tested using concordance index in internal and external test cohorts. Accordingly, the patients were stratified into risk groups, and the model-predicted risks were used to develop risk-based follow-up schedules. The schedule was compared with the Radiation Therapy Oncology Group (RTOG) recommendation (every 3 months during the first 2 years and every 6 months in 3-5 years). Additionally, the model was used to evaluate plans with similar DVH parameters.

Findings: Our model achieved concordance indexes of 0.831, 0.818, and 0.804, respectively, which outperformed conventional prediction models (all  < 0.001). The temporal lobes in all the cohorts were stratified into three groups with discrepant TLI-free survival. Personalized follow-up schedules developed for each risk group could detect TLI 1.9 months earlier than the RTOG recommendation. According to a higher median predicted 3-year TLI-free survival (99.25% vs. 99.15%,  < 0.001), the model identified a better plan than previous models.

Interpretation: The deep learning model predicted TLI more precisely. The model-determined risk-based follow-up schedule detected the TLI earlier. The planning evaluation was refined because the model identified a better plan with a lower risk of TLI.

Funding: The Sun Yat-sen University Clinical Research 5010 Program (2015020), Guangdong Basic and Applied Basic Research Foundation (2022A1515110356), Medical Scientific Research Foundation of Guangdong Province (A2022367), and Guangzhou Science and Technology Program (2023A04J1788).

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10114519PMC
http://dx.doi.org/10.1016/j.eclinm.2023.101930DOI Listing

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