Title of article :
Automated Whole-Body Bone Lesion Detection for Multiple Myeloma on 68Ga-Pentixafor PET/CT Imaging Using Deep Learning Methods
Author/Authors :
Xu, Lina Department of Informatics - Technische Universitat Munchen - Munich, Germany , Tetteh, Giles Department of Informatics - Technische Universitat Munchen - Munich, Germany , Lipkova, Jana Department of Informatics - Technische Universitat Munchen - Munich, Germany , Zhao, Yu Department of Informatics - Technische Universitat Munchen - Munich, Germany , Li, Hongwei Department of Informatics - Technische Universitat Munchen - Munich, Germany , Christ, Patrick Department of Informatics - Technische Universitat Munchen - Munich, Germany , Piraud, Marie Department of Informatics - Technische Universitat Munchen - Munich, Germany , Buck, Andreas Department of Nuclear Medicine - Universitat Wurzburg - Wurzburg, Germany , Shi, Kuangyu Department of Nuclear Medicine - Klinikum Rechts der Isar - TU Munchen - Munich, Germany , Menze, Bjoern H Department of Informatics - Technische Universitat Munchen - Munich, Germany
Pages :
11
From page :
1
To page :
11
Abstract :
The identification of bone lesions is crucial in the diagnostic assessment of multiple myeloma (MM). 68Ga-Pentixafor PET/CT can capture the abnormal molecular expression of CXCR-4 in addition to anatomical changes. However, whole-body detection of dozens of lesions on hybrid imaging is tedious and error prone. It is even more difcult to identify lesions with a large heterogeneity. Tis study employed deep learning methods to automatically combine characteristics of PET and CT for whole-body MM bone lesion detection in a 3D manner. Two convolutional neural networks (CNNs), V-Net and W-Net, were adopted to segment and detect the lesions. The feasibility of deep learning for lesion detection on 68Ga-Pentixafor PET/CT was first verifed on digital phantoms generated using realistic PET simulation methods. Ten the proposed methods were evaluated on real 68Ga-Pentixafor PET/CT scans of MM patients. The preliminary results showed that deep learning method can leverage multimodal information for spatial feature representation, and W-Net obtained the best result for segmentation and lesion detection. It also outperformed traditional machine learning methods such as random forest classifer (RF), K-Nearest Neighbors (k-NN), and support vector machine (SVM). The proof-of-concept study encourages further development of deep learning approach for MM lesion detection in population study.
Keywords :
PET/CT , Deep , 18F-FDG PET
Journal title :
Contrast Media and Molecular Imaging
Serial Year :
2018
Full Text URL :
Record number :
2618472
Link To Document :
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