Radiomics in Head and Neck Cancer Outcome Predictions.
Maria GonçalvesChristina GsaxnerAndré FerreiraJianning LiBehrus PuladiJens KleesiekJan EggerVictor AlvesPublished in: Diagnostics (Basel, Switzerland) (2022)
Head and neck cancer has great regional anatomical complexity, as it can develop in different structures, exhibiting diverse tumour manifestations and high intratumoural heterogeneity, which is highly related to resistance to treatment, progression, the appearance of metastases, and tumour recurrences. Radiomics has the potential to address these obstacles by extracting quantitative, measurable, and extractable features from the region of interest in medical images. Medical imaging is a common source of information in clinical practice, presenting a potential alternative to biopsy, as it allows the extraction of a large number of features that, although not visible to the naked eye, may be relevant for tumour characterisation. Taking advantage of machine learning techniques, the set of features extracted when associated with biological parameters can be used for diagnosis, prognosis, and predictive accuracy valuable for clinical decision-making. Therefore, the main goal of this contribution was to determine to what extent the features extracted from Computed Tomography (CT) are related to cancer prognosis, namely Locoregional Recurrences (LRs), the development of Distant Metastases (DMs), and Overall Survival (OS). Through the set of tumour characteristics, predictive models were developed using machine learning techniques. The tumour was described by radiomic features, extracted from images, and by the clinical data of the patient. The performance of the models demonstrated that the most successful algorithm was XGBoost, and the inclusion of the patients' clinical data was an asset for cancer prognosis. Under these conditions, models were created that can reliably predict the LR, DM, and OS status, with the area under the ROC curve (AUC) values equal to 0.74, 0.84, and 0.91, respectively. In summary, the promising results obtained show the potential of radiomics, once the considered cancer prognosis can, in fact, be expressed through CT scans.
Keyphrases
- computed tomography
- papillary thyroid
- contrast enhanced
- lymph node metastasis
- machine learning
- deep learning
- high resolution
- dual energy
- squamous cell
- positron emission tomography
- magnetic resonance imaging
- big data
- image quality
- healthcare
- decision making
- clinical practice
- electronic health record
- end stage renal disease
- ejection fraction
- human health
- convolutional neural network
- newly diagnosed
- case report
- type diabetes
- chronic kidney disease
- squamous cell carcinoma
- magnetic resonance
- optical coherence tomography
- adipose tissue
- single cell
- prognostic factors
- mass spectrometry
- insulin resistance
- risk assessment
- metabolic syndrome
- ultrasound guided
- weight loss
- childhood cancer
- data analysis
- social media
- free survival
- combination therapy
- neural network
- lymph node