ATLAAS: an automatic decision tree-based learning algorithm for advanced image segmentation in positron emission tomography

被引:37
作者
Berthon, Beatrice [1 ,5 ]
Marshall, Christopher [1 ]
Evans, Mererid [2 ]
Spezi, Emiliano [3 ,4 ]
机构
[1] Cardiff Univ, Wales Res & Diagnost PET Imaging Ctr, Cardiff CF14 4XN, S Glam, Wales
[2] Velindre Canc Ctr, Cardiff CF14 2TL, S Glam, Wales
[3] Cardiff Univ, Sch Engn, Queens Bldg, Cardiff CF24 3AA, S Glam, Wales
[4] Velindre Canc Ctr, Dept Med Phys, Cardiff CF14 2TL, S Glam, Wales
[5] PSL Res Univ, ESPCI Paris, Inst Langevin, CNRS UMR 7587,INSERM U979, 17 Rue Moreau, F-75012 Paris, France
关键词
positron emission tomography; image segmentation; supervised machine learning; radiotherapy treatment planning; PET IMAGES; HEAD; DELINEATION; CT; PERFORMANCE; FEATURES; STAPLE;
D O I
10.1088/0031-9155/61/13/4855
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Accurate and reliable tumour delineation on positron emission tomography (PET) is crucial for radiotherapy treatment planning. PET automatic segmentation (PET-AS) eliminates intra-and interobserver variability, but there is currently no consensus on the optimal method to use, as different algorithms appear to perform better for different types of tumours. This work aimed to develop a predictive segmentation model, trained to automatically select and apply the best PET-AS method, according to the tumour characteristics. ATLAAS, the automatic decision tree-based learning algorithm for advanced segmentation is based on supervised machine learning using decision trees. The model includes nine PET-AS methods and was trained on a 100 PET scans with known true contour. A decision tree was built for each PET-AS algorithm to predict its accuracy, quantified using the Dice similarity coefficient (DSC), according to the tumour volume, tumour peak to background SUV ratio and a regional texture metric. The performance of ATLAAS was evaluated for 85 PET scans obtained from fillable and printed subresolution sandwich phantoms. ATLAAS showed excellent accuracy across a wide range of phantom data and predicted the best or near-best segmentation algorithm in 93% of cases. ATLAAS outperformed all single PET-AS methods on fillable phantom data with a DSC of 0.881, while the DSC for H&N phantom data was 0.819. DSCs higher than 0.650 were achieved in all cases. ATLAAS is an advanced automatic image segmentation algorithm based on decision tree predictive modelling, which can be trained on images with known true contour, to predict the best PET-AS method when the true contour is unknown. ATLAAS provides robust and accurate image segmentation with potential applications to radiation oncology.
引用
收藏
页码:4855 / 4869
页数:15
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