DocumentCode :
3268826
Title :
The Combination of Clinical, Dose-Related and Imaging Features Helps Predict Radiation-Induced Normal-Tissue Toxicity in Lung-cancer Patients -- An in-silico Trial Using Machine Learning Techniques
Author :
Nalbantov, G. ; Dekker, A. ; De Ruysscher, D. ; Lambin, P. ; Smirnov, E.N.
Author_Institution :
Dept. of Radiat. Oncology (MAASTRO), Univ. Med. Centre Maastricht, Maastricht, Netherlands
Volume :
2
fYear :
2011
fDate :
18-21 Dec. 2011
Firstpage :
220
Lastpage :
224
Abstract :
The amount of delivered radiation dose to the tumor in non-small cell lung cancer (NSCLC) patients is limited by the negative side effects on normal tissues. The most dose-limiting factor in radiotherapy is the radiation-induced lung toxicity (RILT). RILT is generally measured semi-quantitatively, by a dyspnea, or shortness-of-breath, score. In general, about 20-30% of patients develop RILT several months after treatment, and in about 70% of the patients the delivered dose is insufficient to control the tumor growth. Ideally, if the RILT score would be known in advance, then the dose treatment plan for the low-toxicity-risk patients could be adjusted so that higher dose is delivered to the tumor to better control it. A number of possible predictors of RILT have been proposed in the literature, including dose-related and clinical/demographic patient characteristics available prior to radiotherapy. In addition, the use of imaging features -- which are noninvasive in nature - has been gaining momentum. Thus, anatomic as well as functional/metabolic information from CT and PET scanner images respectively are used in daily clinical practice, which provide further information about the status of a patient. In this study we assessed whether machine learning techniques can successfully be applied to predict post-radiation lung damage, proxied by dyspnea score, based on clinical, dose-related (dosimetric) and image features. Our dataset included 78 NSCLC patients. The patients were divided into two groups: no-deterioration-of-dyspnea, and deterioration-of-dyspnea patients. Several machine-learning binary classifiers were applied to discriminate the two groups. The results, evaluated using the area under the ROC curve in a cross-validation procedure, are highly promising. This outcome could open the possibility to deliver better, individualized dose-treatment plans for lung cancer patients and help the overall clinical decision making (treatment) process.
Keywords :
biological tissues; cancer; cellular biophysics; computerised tomography; decision making; dosimetry; learning (artificial intelligence); lung; medical image processing; positron emission tomography; radiation therapy; sensitivity analysis; tumours; CT scanner imaging; PET scanner imaging; ROC curve; clinical-demographic patient characteristics; decision making processing; deterioration-of-dyspnea patients; dose treatment planing; dose-limiting factor; functional-metabolic information; low-toxicity-risk patients; machine learning techniques; machine-learning binary classifiers; nonsmall cell lung cancer patients; normal tissues; post-radiation lung damage; radiation dosimetry; radiation-induced lung toxicity; radiation-induced normal-tissue toxicity; radiotherapy; tumor growth; Cancer; Computed tomography; Lungs; Machine learning; Positron emission tomography; Three dimensional displays; Tumors; Non-small cell lung cancer; clinical prognostic models; individualized dose treatment planning; radiation-induced lung damage;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Machine Learning and Applications and Workshops (ICMLA), 2011 10th International Conference on
Conference_Location :
Honolulu, HI
Print_ISBN :
978-1-4577-2134-2
Type :
conf
DOI :
10.1109/ICMLA.2011.139
Filename :
6147677
Link To Document :
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