Using meta-analysis and CNN-NLP to review and classify the medical literature for normal tissue complication probability in head and neck cancer

Radiat Oncol. 2024 Jan 9;19(1):5. doi: 10.1186/s13014-023-02381-7.

Abstract

Purpose: The study aims to enhance the efficiency and accuracy of literature reviews on normal tissue complication probability (NTCP) in head and neck cancer patients using radiation therapy. It employs meta-analysis (MA) and natural language processing (NLP).

Material and methods: The study consists of two parts. First, it employs MA to assess NTCP models for xerostomia, dysphagia, and mucositis after radiation therapy, using Python 3.10.5 for statistical analysis. Second, it integrates NLP with convolutional neural networks (CNN) to optimize literature search, reducing 3256 articles to 12. CNN settings include a batch size of 50, 50-200 epoch range and a 0.001 learning rate.

Results: The study's CNN-NLP model achieved a notable accuracy of 0.94 after 200 epochs with Adamax optimization. MA showed an AUC of 0.67 for early-effect xerostomia and 0.74 for late-effect, indicating moderate to high predictive accuracy but with high variability across studies. Initial CNN accuracy of 66.70% improved to 94.87% post-tuning by optimizer and hyperparameters.

Conclusion: The study successfully merges MA and NLP, confirming high predictive accuracy for specific model-feature combinations. It introduces a time-based metric, words per minute (WPM), for efficiency and highlights the utility of MA and NLP in clinical research.

Keywords: Artificial intelligence; Convolutional neural networks; Head and neck cancer; Meta-analysis; Natural language processing; Normal tissue complication probability prediction; Radiation therapy; Squamous cell carcinoma of the head and neck.

Publication types

  • Meta-Analysis

MeSH terms

  • Head and Neck Neoplasms* / radiotherapy
  • Humans
  • Natural Language Processing
  • Neural Networks, Computer
  • Probability
  • Xerostomia* / etiology