<博士論文>
体幹部定位放射線治療における肉眼的腫瘍体積の自動抽出法に対する機械学習の効果

作成者
論文調査委員
本文言語
学位授与年度
学位授与大学
学位
学位種別
出版タイプ
アクセス権
JaLC DOI
関連DOI
概要 The aim of this study was to investigate the impact of pixel-based machine learning (ML) techniques, i.e.,fuzzy-c-means clustering method (FCM), and the artificial neural network (ANN) and support vec...tor machine (SVM), on an automated framework for delineation of gross tumor volume (GTV) regions of lung cancer for stereotactic body radiation therapy. The morphological and metabolic features for GTV regions, which were determined based on the knowledge of radiation oncologists, were fed on a pixel-by-pixel basis into the respective FCM, ANN, and SVM ML techniques. Then, the ML techniques were incorporated into the automated delineation framework of GTVs followed by an optimum contour selection (OCS) method, which we proposed in a previous study. The three-ML-based frameworks were evaluated for 16 lung cancer cases (six solid, four ground glass opacity (GGO), six part-solid GGO) with the datasets of planning computed tomography (CT) and 18F-fluorodeoxyglucose (FDG) positron emission tomography (PET)/CT images using the three-dimensional Dice similarity coefficient (DSC). DSC denotes the degree of region similarity between the GTVs contoured by radiation oncologists and those estimated using the automated framework. The FCM-based framework achieved the highest DSCs of 0.79 ± 0.06, whereas DSCs of the ANN-based and SVM-based frameworks were 0.76 ± 0.14 and 0.73 ± 0.14, respectively. The FCM-based framework provided the highest segmentation accuracy and precision without a learning process (lowest calculation cost). Therefore, the FCM-based framework can be useful for delineation of tumor regions in practical treatment planning.続きを見る

本文ファイル

pdf med3083 pdf 1.06 MB 630 本文
pdf med3083_abstract pdf 134 KB 209 要旨
pdf med3083_review pdf 99.5 KB 245 審査結果要旨

詳細

レコードID
査読有無
権利関係
関連PubMed ID
報告番号
学位記番号
授与日(学位/助成/特許)
受理日
部局
登録日 2018.05.30
更新日 2020.01.31

この資料を見た人はこんな資料も見ています