Deep learning based automatic segmentation of metastasis hotspots in thorax bone SPECT images.

SPECT imaging has been identified as an effective medical modality for diagnosis, treatment, evaluation and prevention of a range of serious diseases and medical conditions. Bone SPECT scan has the potential to provide more accurate assessment of disease stage and severity. Segmenting hotspot in bon...

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Main Authors: Qiang Lin, Mingyang Luo, Ruiting Gao, Tongtong Li, Zhengxing Man, Yongchun Cao, Haijun Wang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0243253
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spelling doaj-8c0f69555c5b4841b2f9650761b80d332021-03-04T12:49:53ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-011512e024325310.1371/journal.pone.0243253Deep learning based automatic segmentation of metastasis hotspots in thorax bone SPECT images.Qiang LinMingyang LuoRuiting GaoTongtong LiZhengxing ManYongchun CaoHaijun WangSPECT imaging has been identified as an effective medical modality for diagnosis, treatment, evaluation and prevention of a range of serious diseases and medical conditions. Bone SPECT scan has the potential to provide more accurate assessment of disease stage and severity. Segmenting hotspot in bone SPECT images plays a crucial role to calculate metrics like tumor uptake and metabolic tumor burden. Deep learning techniques especially the convolutional neural networks have been widely exploited for reliable segmentation of hotspots or lesions, organs and tissues in the traditional structural medical images (i.e., CT and MRI) due to their ability of automatically learning the features from images in an optimal way. In order to segment hotspots in bone SPECT images for automatic assessment of metastasis, in this work, we develop several deep learning based segmentation models. Specifically, each original whole-body bone SPECT image is processed to extract the thorax area, followed by image mirror, translation and rotation operations, which augments the original dataset. We then build segmentation models based on two commonly-used famous deep networks including U-Net and Mask R-CNN by fine-tuning their structures. Experimental evaluation conducted on a group of real-world bone SEPCT images reveals that the built segmentation models are workable on identifying and segmenting hotspots of metastasis in bone SEPCT images, achieving a value of 0.9920, 0.7721, 0.6788 and 0.6103 for PA (accuracy), CPA (precision), Rec (recall) and IoU, respectively. Finally, we conclude that the deep learning technology have the huge potential to identify and segment hotspots in bone SPECT images.https://doi.org/10.1371/journal.pone.0243253
collection DOAJ
language English
format Article
sources DOAJ
author Qiang Lin
Mingyang Luo
Ruiting Gao
Tongtong Li
Zhengxing Man
Yongchun Cao
Haijun Wang
spellingShingle Qiang Lin
Mingyang Luo
Ruiting Gao
Tongtong Li
Zhengxing Man
Yongchun Cao
Haijun Wang
Deep learning based automatic segmentation of metastasis hotspots in thorax bone SPECT images.
PLoS ONE
author_facet Qiang Lin
Mingyang Luo
Ruiting Gao
Tongtong Li
Zhengxing Man
Yongchun Cao
Haijun Wang
author_sort Qiang Lin
title Deep learning based automatic segmentation of metastasis hotspots in thorax bone SPECT images.
title_short Deep learning based automatic segmentation of metastasis hotspots in thorax bone SPECT images.
title_full Deep learning based automatic segmentation of metastasis hotspots in thorax bone SPECT images.
title_fullStr Deep learning based automatic segmentation of metastasis hotspots in thorax bone SPECT images.
title_full_unstemmed Deep learning based automatic segmentation of metastasis hotspots in thorax bone SPECT images.
title_sort deep learning based automatic segmentation of metastasis hotspots in thorax bone spect images.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description SPECT imaging has been identified as an effective medical modality for diagnosis, treatment, evaluation and prevention of a range of serious diseases and medical conditions. Bone SPECT scan has the potential to provide more accurate assessment of disease stage and severity. Segmenting hotspot in bone SPECT images plays a crucial role to calculate metrics like tumor uptake and metabolic tumor burden. Deep learning techniques especially the convolutional neural networks have been widely exploited for reliable segmentation of hotspots or lesions, organs and tissues in the traditional structural medical images (i.e., CT and MRI) due to their ability of automatically learning the features from images in an optimal way. In order to segment hotspots in bone SPECT images for automatic assessment of metastasis, in this work, we develop several deep learning based segmentation models. Specifically, each original whole-body bone SPECT image is processed to extract the thorax area, followed by image mirror, translation and rotation operations, which augments the original dataset. We then build segmentation models based on two commonly-used famous deep networks including U-Net and Mask R-CNN by fine-tuning their structures. Experimental evaluation conducted on a group of real-world bone SEPCT images reveals that the built segmentation models are workable on identifying and segmenting hotspots of metastasis in bone SEPCT images, achieving a value of 0.9920, 0.7721, 0.6788 and 0.6103 for PA (accuracy), CPA (precision), Rec (recall) and IoU, respectively. Finally, we conclude that the deep learning technology have the huge potential to identify and segment hotspots in bone SPECT images.
url https://doi.org/10.1371/journal.pone.0243253
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