A deep semantic segmentation correction network for multi-model tiny lesion areas detection
Abstract Background Semantic segmentation of white matter hyperintensities related to focal cerebral ischemia (FCI) and lacunar infarction (LACI) is of significant importance for the automatic screening of tiny cerebral lesions and early prevention of LACI. However, existing studies on brain magneti...
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doaj-a5ca741860f142a2a8249ffd21ca6f4b2021-08-01T11:32:07ZengBMCBMC Medical Informatics and Decision Making1472-69472021-07-0121S21910.1186/s12911-021-01430-zA deep semantic segmentation correction network for multi-model tiny lesion areas detectionYue Liu0Xiang Li1Tianyang Li2Bin Li3Zhensong Wang4Jie Gan5Benzheng Wei6Center for Medical Artificial Intelligence, Shandong University of Traditional Chinese MedicineCenter for Medical Artificial Intelligence, Shandong University of Traditional Chinese MedicineCenter for Medical Artificial Intelligence, Shandong University of Traditional Chinese MedicineRadiology Department, Second Affiliated Hospital of Shandong University of Traditional Chinese MedicineRadiology Department, Second Affiliated Hospital of Shandong University of Traditional Chinese MedicineRadiology Department, Second Affiliated Hospital of Shandong University of Traditional Chinese MedicineCenter for Medical Artificial Intelligence, Shandong University of Traditional Chinese MedicineAbstract Background Semantic segmentation of white matter hyperintensities related to focal cerebral ischemia (FCI) and lacunar infarction (LACI) is of significant importance for the automatic screening of tiny cerebral lesions and early prevention of LACI. However, existing studies on brain magnetic resonance imaging lesion segmentation focus on large lesions with obvious features, such as glioma and acute cerebral infarction. Owing to the multi-model tiny lesion areas of FCI and LACI, reliable and precise segmentation and/or detection of these lesion areas is still a significant challenge task. Methods We propose a novel segmentation correction algorithm for estimating the lesion areas via segmentation and correction processes, in which we design two sub-models simultaneously: a segmentation network and a correction network. The segmentation network was first used to extract and segment diseased areas on T2 fluid-attenuated inversion recovery (FLAIR) images. Consequently, the correction network was used to classify these areas at the corresponding locations on T1 FLAIR images to distinguish between FCI and LACI. Finally, the results of the correction network were used to correct the segmentation results and achieve segmentation and recognition of the lesion areas. Results In our experiment on magnetic resonance images of 113 clinical patients, our method achieved a precision of 91.76% for detection and 92.89% for classification, indicating a powerful method to distinguish between small lesions, such as FCI and LACI. Conclusions Overall, we developed a complete method for segmentation and detection of WMHs related to FCI and LACI. The experimental results show that it has potential clinical application potential. In the future, we will collect more clinical data and test more types of tiny lesions at the same time.https://doi.org/10.1186/s12911-021-01430-zWhite matter hyperintensitiesFocal cerebral ischemiaLacunar infarctMagnetic resonance imagingMulti-modality |
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DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yue Liu Xiang Li Tianyang Li Bin Li Zhensong Wang Jie Gan Benzheng Wei |
spellingShingle |
Yue Liu Xiang Li Tianyang Li Bin Li Zhensong Wang Jie Gan Benzheng Wei A deep semantic segmentation correction network for multi-model tiny lesion areas detection BMC Medical Informatics and Decision Making White matter hyperintensities Focal cerebral ischemia Lacunar infarct Magnetic resonance imaging Multi-modality |
author_facet |
Yue Liu Xiang Li Tianyang Li Bin Li Zhensong Wang Jie Gan Benzheng Wei |
author_sort |
Yue Liu |
title |
A deep semantic segmentation correction network for multi-model tiny lesion areas detection |
title_short |
A deep semantic segmentation correction network for multi-model tiny lesion areas detection |
title_full |
A deep semantic segmentation correction network for multi-model tiny lesion areas detection |
title_fullStr |
A deep semantic segmentation correction network for multi-model tiny lesion areas detection |
title_full_unstemmed |
A deep semantic segmentation correction network for multi-model tiny lesion areas detection |
title_sort |
deep semantic segmentation correction network for multi-model tiny lesion areas detection |
publisher |
BMC |
series |
BMC Medical Informatics and Decision Making |
issn |
1472-6947 |
publishDate |
2021-07-01 |
description |
Abstract Background Semantic segmentation of white matter hyperintensities related to focal cerebral ischemia (FCI) and lacunar infarction (LACI) is of significant importance for the automatic screening of tiny cerebral lesions and early prevention of LACI. However, existing studies on brain magnetic resonance imaging lesion segmentation focus on large lesions with obvious features, such as glioma and acute cerebral infarction. Owing to the multi-model tiny lesion areas of FCI and LACI, reliable and precise segmentation and/or detection of these lesion areas is still a significant challenge task. Methods We propose a novel segmentation correction algorithm for estimating the lesion areas via segmentation and correction processes, in which we design two sub-models simultaneously: a segmentation network and a correction network. The segmentation network was first used to extract and segment diseased areas on T2 fluid-attenuated inversion recovery (FLAIR) images. Consequently, the correction network was used to classify these areas at the corresponding locations on T1 FLAIR images to distinguish between FCI and LACI. Finally, the results of the correction network were used to correct the segmentation results and achieve segmentation and recognition of the lesion areas. Results In our experiment on magnetic resonance images of 113 clinical patients, our method achieved a precision of 91.76% for detection and 92.89% for classification, indicating a powerful method to distinguish between small lesions, such as FCI and LACI. Conclusions Overall, we developed a complete method for segmentation and detection of WMHs related to FCI and LACI. The experimental results show that it has potential clinical application potential. In the future, we will collect more clinical data and test more types of tiny lesions at the same time. |
topic |
White matter hyperintensities Focal cerebral ischemia Lacunar infarct Magnetic resonance imaging Multi-modality |
url |
https://doi.org/10.1186/s12911-021-01430-z |
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