scholarly journals Verification of a Machine Learning Algorithm That Predict Volume Reduction in Primary and Nodal Tumor Volumes in Head and Neck Cancer During Treatment

Author(s):  
M. Surucu ◽  
S.R. Silva ◽  
J.C. Roeske ◽  
I. Mescioglu ◽  
N. Hurst ◽  
...  
Author(s):  
Prof O. Olabode ◽  
Prof A. O. Adetunmbi ◽  
Folake Akinbohun ◽  
Dr Ambrose Akinbohun

The worldwide incidence of head and neck cancer exceeds half a million cases annually. The morbidity and mortality of head and neck cancers considering thyroid, nasopharyngeal, sinonasal and laryngeal were reported high. The degree of facial disfigurement is unrivalled. Information Gain and Chi Square, Decision and Naïve Bayes were deployed for the study. The dataset was divided into training and test data. The results showed that the performance of Naïve Bayes outperformed Decision Trees. With the application of machine learning algorithms, head and neck cancer can be classified. KEYWORDS: Head and Neck, thyroid, Chi Square, Information Gain


2020 ◽  
Vol 5 (4) ◽  
pp. 489-493
Author(s):  
Olatunbosun Olabode ◽  
Adebayo O. Adetunmbi ◽  
Folake Akinbohun ◽  
Ambrose Akinbohun

Head and neck cancers (HNC) are indicated when cells grow abnormally.  The disturbing rate of morbidity and mortality of patients with HNC due to late presentation is on the increase especially in Africa (developing countries). There is need to diagnose head and neck cancer early if patients present so that prompt referral could be facilitated.  The collected data consists of 1473 instances with 18 features. The dataset was divided into training and test data.  Two supervised learning algorithms were deployed for the study namely: Decision Tree (C4.5) and k-Nearest Neighbors (KNN). It showed that Decision Tree outperformed with accuracy of 91.40% while KNN had accuracy of 88.24%. Hence, machine learning algorithm like Decision Tree can be used for diagnosis of HNC in healthcare organisations.


2020 ◽  
Vol 3 (11) ◽  
pp. e2025881
Author(s):  
Frederick Matthew Howard ◽  
Sara Kochanny ◽  
Matthew Koshy ◽  
Michael Spiotto ◽  
Alexander T. Pearson

2021 ◽  
Vol 11 ◽  
Author(s):  
Stefania Volpe ◽  
Matteo Pepa ◽  
Mattia Zaffaroni ◽  
Federica Bellerba ◽  
Riccardo Santamaria ◽  
...  

Background and PurposeMachine learning (ML) is emerging as a feasible approach to optimize patients’ care path in Radiation Oncology. Applications include autosegmentation, treatment planning optimization, and prediction of oncological and toxicity outcomes. The purpose of this clinically oriented systematic review is to illustrate the potential and limitations of the most commonly used ML models in solving everyday clinical issues in head and neck cancer (HNC) radiotherapy (RT).Materials and MethodsElectronic databases were screened up to May 2021. Studies dealing with ML and radiomics were considered eligible. The quality of the included studies was rated by an adapted version of the qualitative checklist originally developed by Luo et al. All statistical analyses were performed using R version 3.6.1.ResultsForty-eight studies (21 on autosegmentation, four on treatment planning, 12 on oncological outcome prediction, 10 on toxicity prediction, and one on determinants of postoperative RT) were included in the analysis. The most common imaging modality was computed tomography (CT) (40%) followed by magnetic resonance (MR) (10%). Quantitative image features were considered in nine studies (19%). No significant differences were identified in global and methodological scores when works were stratified per their task (i.e., autosegmentation).Discussion and ConclusionThe range of possible applications of ML in the field of HN Radiation Oncology is wide, albeit this area of research is relatively young. Overall, if not safe yet, ML is most probably a bet worth making.


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