Prediction of Incomplete Response of Primary Tumour Based on Clinical and Radiomics Features in Inoperable Head and Neck Cancers after Definitive Treatment.
Joanna KaźmierskaMichał R KaźmierskiTomasz BajonTomasz WinieckiAnna Bandurska-LuqueAdam RyczkowskiTomasz PiotrowskiBartosz BąkMałgorzata Żmijewska-TomczakPublished in: Journal of personalized medicine (2022)
Radical treatment of patients diagnosed with inoperable and locally advanced head and neck cancers (LAHNC) is still a challenge for clinicians. Prediction of incomplete response (IR) of primary tumour would be of value to the treatment optimization for patients with LAHNC. Aim of this study was to develop and evaluate models based on clinical and radiomics features for prediction of IR in patients diagnosed with LAHNC and treated with definitive chemoradiation or radiotherapy. Clinical and imaging data of 290 patients were included into this retrospective study. Clinical model was built based on tumour and patient related features. Radiomics features were extracted based on imaging data, consisting of contrast- and non-contrast-enhanced pre-treatment CT images, obtained in process of diagnosis and radiotherapy planning. Performance of clinical and combined models were evaluated with area under the ROC curve (AUROC). Classification performance was evaluated using 5-fold cross validation. Model based on selected clinical features including ECOG performance, tumour stage T3/4, primary site: oral cavity and tumour volume were significantly predictive for IR, with AUROC of 0.78. Combining clinical and radiomics features did not improve model's performance, achieving AUROC 0.77 and 0.68 for non-contrast enhanced and contrast-enhanced images respectively. The model based on clinical features showed good performance in IR prediction. Combined model performance suggests that real-world imaging data might not yet be ready for use in predictive models.
Keyphrases
- contrast enhanced
- locally advanced
- diffusion weighted
- magnetic resonance imaging
- computed tomography
- magnetic resonance
- diffusion weighted imaging
- rectal cancer
- end stage renal disease
- squamous cell carcinoma
- newly diagnosed
- deep learning
- neoadjuvant chemotherapy
- ejection fraction
- chronic kidney disease
- electronic health record
- dual energy
- photodynamic therapy
- prognostic factors
- positron emission tomography
- young adults
- big data
- mass spectrometry
- phase ii study
- study protocol
- peritoneal dialysis
- convolutional neural network
- patient reported outcomes
- combination therapy
- patient reported