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MaligNet: Semisupervised Learning for Bone Lesion Instance Segmentation Using Bone Scintigraphy | IEEE Journals & Magazine | IEEE Xplore

MaligNet: Semisupervised Learning for Bone Lesion Instance Segmentation Using Bone Scintigraphy


The chest area of the whole-body bone scintigram is located by the chest detector model. The chest area is then fed to the MaligNet model for lesion instance segmentation...

Abstract:

One challenge in applying deep learning to medical imaging is the lack of labeled data. Although large amounts of clinical data are available, acquiring labeled image dat...Show More
Society Section: IEEE Engineering in Medicine and Biology Society Section

Abstract:

One challenge in applying deep learning to medical imaging is the lack of labeled data. Although large amounts of clinical data are available, acquiring labeled image data is difficult, especially for bone scintigraphy (i.e., 2D bone imaging) images. Bone scintigraphy images are generally noisy, and ground-truth or gold standard information from surgical or pathological reports may not be available. We propose a novel neural network model that can segment abnormal hotspots and classify bone cancer metastases in the chest area in a semisupervised manner. Our proposed model, called MaligNet, is an instance segmentation model that incorporates ladder networks to harness both labeled and unlabeled data. Unlike deep learning segmentation models that classify each instance independently, MaligNet utilizes global information via an additional connection from the core network. To evaluate the performance of our model, we created a dataset for bone lesion instance segmentation using labeled and unlabeled example data from 544 and 9,280 patients, respectively. Our proposed model achieved mean precision, mean sensitivity, and mean F1-score of 0.852, 0.856, and 0.848, respectively, and outperformed the baseline mask region-based convolutional neural network (Mask R-CNN) by 3.92%. Further analysis showed that incorporating global information also helps the model classify specific instances that require information from other regions. On the metastasis classification task, our model achieves a sensitivity of 0.657 and a specificity of 0.857, demonstrating its great potential for automated diagnosis using bone scintigraphy in clinical practice.
Society Section: IEEE Engineering in Medicine and Biology Society Section
The chest area of the whole-body bone scintigram is located by the chest detector model. The chest area is then fed to the MaligNet model for lesion instance segmentation...
Published in: IEEE Access ( Volume: 8)
Page(s): 27047 - 27066
Date of Publication: 03 February 2020
Electronic ISSN: 2169-3536

References

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