Literature DB >> 28325604

Early prediction of radiotherapy-induced parotid shrinkage and toxicity based on CT radiomics and fuzzy classification.

Marco Pota1, Elisa Scalco2, Giuseppe Sanguineti3, Alessia Farneti3, Giovanni Mauro Cattaneo4, Giovanna Rizzo2, Massimo Esposito5.   

Abstract

MOTIVATION: Patients under radiotherapy for head-and-neck cancer often suffer of long-term xerostomia, and/or consistent shrinkage of parotid glands. In order to avoid these drawbacks, adaptive therapy can be planned for patients at risk, if the prediction is obtained timely, before or during the early phase of treatment. Artificial intelligence can address the problem, by learning from examples and building classification models. In particular, fuzzy logic has shown its suitability for medical applications, in order to manage uncertain data, and to build transparent rule-based classifiers. In previous works, clinical, dosimetric and image-based features were considered separately, to find different possible predictors of parotid shrinkage. On the other hand, a few works reported possible image-based predictors of xerostomia, while the combination of different types of features has been little addressed.
OBJECTIVE: This paper proposes the application of a novel machine learning approach, based on both statistics and fuzzy logic, aimed at the classification of patients at risk of i) parotid gland shrinkage and ii) 12-months xerostomia. Both problems are addressed with the aim of individuating predictors and models to classify respective outcomes.
METHODS: Knowledge is extracted from a real dataset of radiotherapy patients, by means of a recently developed method named Likelihood-Fuzzy Analysis, based on the representation of statistical information by fuzzy rule-based models. This method enables to manage heterogeneous variables and missing data, and to obtain interpretable fuzzy models presenting good generalization power (thus high performance), and to measure classification confidence. Numerous features are extracted to characterize patients, coming from different sources, i.e. clinical features, dosimetric parameters, and radiomics-based measures obtained by texture analysis of Computed Tomography images. A learning approach based on the composition of simple models in a more complicated one allows to consider the features separately, in order to identify predictors and models to use when only some data source is available, and obtaining more accurate results when more information can be combined.
RESULTS: Regarding parotid shrinkage, a number of good predictors is detected, some already known and confirmed here, and some others found here, in particular among radiomics-based features. A number of models are also designed, some using single features and others involving models composition to improve classification accuracy. In particular, the best model to be used at the initial treatment stage, and another one applicable at the half treatment stage are identified. Regarding 12-months toxicity, some possible predictors are detected, in particular among radiomics-based features. Moreover, the relation between final parotid shrinkage rate and 12-months xerostomia is evaluated. The method is compared to the naïve Bayes classifier, which reveals similar results in terms of classification accuracy and best predictors. The interpretable fuzzy rule-based models are explicitly presented, and the dependence between predictors and outcome is explained, thus furnishing in some cases helpful insights about the considered problems.
CONCLUSION: Thanks to the performance and interpretability of the fuzzy classification method employed, predictors of both parotid shrinkage and xerostomia are detected, and their influence on each outcome is revealed. Moreover, models for predicting parotid shrinkage at initial and half radiotherapy stages are found.
Copyright © 2017 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Classification; Fuzzy logic; Parotid gland; Radiomics; Rule-based systems; Xerostomia

Mesh:

Year:  2017        PMID: 28325604     DOI: 10.1016/j.artmed.2017.03.004

Source DB:  PubMed          Journal:  Artif Intell Med        ISSN: 0933-3657            Impact factor:   5.326


  12 in total

1.  A Deep Learning Model for Predicting Xerostomia Due to Radiation Therapy for Head and Neck Squamous Cell Carcinoma in the RTOG 0522 Clinical Trial.

Authors:  Kuo Men; Huaizhi Geng; Haoyu Zhong; Yong Fan; Alexander Lin; Ying Xiao
Journal:  Int J Radiat Oncol Biol Phys       Date:  2019-06-13       Impact factor: 7.038

2.  Paired cycle-GAN-based image correction for quantitative cone-beam computed tomography.

Authors:  Joseph Harms; Yang Lei; Tonghe Wang; Rongxiao Zhang; Jun Zhou; Xiangyang Tang; Walter J Curran; Tian Liu; Xiaofeng Yang
Journal:  Med Phys       Date:  2019-07-17       Impact factor: 4.071

3.  Classification of Tumor Epithelium and Stroma by Exploiting Image Features Learned by Deep Convolutional Neural Networks.

Authors:  Yue Du; Roy Zhang; Abolfazl Zargari; Theresa C Thai; Camille C Gunderson; Katherine M Moxley; Hong Liu; Bin Zheng; Yuchen Qiu
Journal:  Ann Biomed Eng       Date:  2018-07-26       Impact factor: 3.934

4.  Comparison of radiomics machine-learning classifiers and feature selection for differentiation of sacral chordoma and sacral giant cell tumour based on 3D computed tomography features.

Authors:  Ping Yin; Ning Mao; Chao Zhao; Jiangfen Wu; Chao Sun; Lei Chen; Nan Hong
Journal:  Eur Radiol       Date:  2018-10-02       Impact factor: 5.315

Review 5.  Big Data in Head and Neck Cancer.

Authors:  Carlo Resteghini; Annalisa Trama; Elio Borgonovi; Hykel Hosni; Giovanni Corrao; Ester Orlandi; Giuseppina Calareso; Loris De Cecco; Cesare Piazza; Luca Mainardi; Lisa Licitra
Journal:  Curr Treat Options Oncol       Date:  2018-10-25

6.  Early prediction of acute xerostomia during radiation therapy for nasopharyngeal cancer based on delta radiomics from CT images.

Authors:  Yanxia Liu; Hongyu Shi; Sijuan Huang; Xiaochuan Chen; Huimin Zhou; Hui Chang; Yunfei Xia; Guohua Wang; Xin Yang
Journal:  Quant Imaging Med Surg       Date:  2019-07

7.  Artificial Intelligence and Radiomics in Head and Neck Cancer Care: Opportunities, Mechanics, and Challenges.

Authors:  Lisanne V van Dijk; Clifton D Fuller
Journal:  Am Soc Clin Oncol Educ Book       Date:  2021-03

8.  Intrinsic radiomic expression patterns after 20 Gy demonstrate early metabolic response of oropharyngeal cancers.

Authors:  Kyle J Lafata; Yushi Chang; Chunhao Wang; Yvonne M Mowery; Irina Vergalasova; Donna Niedzwiecki; David S Yoo; Jian-Guo Liu; David M Brizel; Fang-Fang Yin
Journal:  Med Phys       Date:  2021-06-02       Impact factor: 4.506

Review 9.  Radiomics for radiation oncologists: are we ready to go?

Authors:  Loïg Vaugier; Ludovic Ferrer; Laurence Mengue; Emmanuel Jouglar
Journal:  BJR Open       Date:  2020-03-25

Review 10.  Application of radiomics and machine learning in head and neck cancers.

Authors:  Zhouying Peng; Yumin Wang; Yaxuan Wang; Sijie Jiang; Ruohao Fan; Hua Zhang; Weihong Jiang
Journal:  Int J Biol Sci       Date:  2021-01-01       Impact factor: 6.580

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