{"title":"利用Swin-Unet在感度和T2加权成像中自动分割黑质:应用于帕金森病诊断。","authors":"Tongxing Wang, Yajing Wang, Haichen Zhu, Zhen Liu, Yu-Chen Chen, Liwei Wang, Shaofeng Duan, Xindao Yin, Liang Jiang","doi":"10.21037/qims-24-27","DOIUrl":null,"url":null,"abstract":"<p><strong>Background: </strong>Accurately distinguishing between Parkinson disease (PD) and healthy controls (HCs) through reliable imaging method is crucial for appropriate therapeutic intervention. However, PD diagnosis is hindered by the subjective nature of the evaluation. We aimed to develop an automatic deep-learning method that can segment the substantia nigra areas on susceptibility-weighted imaging (SWI) and T2-weighted imaging (T2WI) and further differentiate patients with PD from HCs using a machine learning algorithm.</p><p><strong>Methods: </strong>Magnetic resonance imaging (MRI) data from 83 patients with PD and 83 age- and sex-matched HCs were obtained on the same 3.0-T MRI scanner. A deep learning method with Swin-Unet was developed to segment volumes of interest (VOIs) on SWI and then map the VOIs on SWI to the corresponding T2WI; features were then extracted from the VOIs on SWI and T2WI. Three machine learning models were developed and compared to differentiate those with PD from HCs.</p><p><strong>Results: </strong>Swin-Unet achieved a better Dice coefficient than did U-Net in SWI segmentation (0.832 <i>vs</i>. 0.712). Machine learning models outperformed visual analysis (P>0.05), and logistic regression (LR) achieved the best performance [area under the curve (AUC) ≥0.819] and the most stable (relative standard deviations in AUC ≤0.05). The test results showed that the AUC of the LR model based on SWI segmentation was 0.894 while that of the LR model based on T2WI segmentation was 0.876. There was no significant difference in VOIs based on manual labeling or automatic segmentation across T2WI, SWI, or a combination of the two (P>0.05). The AUCs of the LR model based on automatic segmentation were close to those of the model based on manual labeling (P>0.05).</p><p><strong>Conclusions: </strong>Our approach could provide a powerful and useful method for automatically and rapidly diagnosing PD in the clinic with only T2WI.</p>","PeriodicalId":54267,"journal":{"name":"Quantitative Imaging in Medicine and Surgery","volume":"14 9","pages":"6337-6351"},"PeriodicalIF":2.9000,"publicationDate":"2024-09-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11400694/pdf/","citationCount":"0","resultStr":"{\"title\":\"Automatic substantia nigra segmentation with Swin-Unet in susceptibility- and T2-weighted imaging: application to Parkinson disease diagnosis.\",\"authors\":\"Tongxing Wang, Yajing Wang, Haichen Zhu, Zhen Liu, Yu-Chen Chen, Liwei Wang, Shaofeng Duan, Xindao Yin, Liang Jiang\",\"doi\":\"10.21037/qims-24-27\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>Accurately distinguishing between Parkinson disease (PD) and healthy controls (HCs) through reliable imaging method is crucial for appropriate therapeutic intervention. However, PD diagnosis is hindered by the subjective nature of the evaluation. We aimed to develop an automatic deep-learning method that can segment the substantia nigra areas on susceptibility-weighted imaging (SWI) and T2-weighted imaging (T2WI) and further differentiate patients with PD from HCs using a machine learning algorithm.</p><p><strong>Methods: </strong>Magnetic resonance imaging (MRI) data from 83 patients with PD and 83 age- and sex-matched HCs were obtained on the same 3.0-T MRI scanner. A deep learning method with Swin-Unet was developed to segment volumes of interest (VOIs) on SWI and then map the VOIs on SWI to the corresponding T2WI; features were then extracted from the VOIs on SWI and T2WI. Three machine learning models were developed and compared to differentiate those with PD from HCs.</p><p><strong>Results: </strong>Swin-Unet achieved a better Dice coefficient than did U-Net in SWI segmentation (0.832 <i>vs</i>. 0.712). Machine learning models outperformed visual analysis (P>0.05), and logistic regression (LR) achieved the best performance [area under the curve (AUC) ≥0.819] and the most stable (relative standard deviations in AUC ≤0.05). The test results showed that the AUC of the LR model based on SWI segmentation was 0.894 while that of the LR model based on T2WI segmentation was 0.876. There was no significant difference in VOIs based on manual labeling or automatic segmentation across T2WI, SWI, or a combination of the two (P>0.05). The AUCs of the LR model based on automatic segmentation were close to those of the model based on manual labeling (P>0.05).</p><p><strong>Conclusions: </strong>Our approach could provide a powerful and useful method for automatically and rapidly diagnosing PD in the clinic with only T2WI.</p>\",\"PeriodicalId\":54267,\"journal\":{\"name\":\"Quantitative Imaging in Medicine and Surgery\",\"volume\":\"14 9\",\"pages\":\"6337-6351\"},\"PeriodicalIF\":2.9000,\"publicationDate\":\"2024-09-01\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11400694/pdf/\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"Quantitative Imaging in Medicine and Surgery\",\"FirstCategoryId\":\"3\",\"ListUrlMain\":\"https://doi.org/10.21037/qims-24-27\",\"RegionNum\":2,\"RegionCategory\":\"医学\",\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"2024/8/21 0:00:00\",\"PubModel\":\"Epub\",\"JCR\":\"Q2\",\"JCRName\":\"RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"Quantitative Imaging in Medicine and Surgery","FirstCategoryId":"3","ListUrlMain":"https://doi.org/10.21037/qims-24-27","RegionNum":2,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"2024/8/21 0:00:00","PubModel":"Epub","JCR":"Q2","JCRName":"RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING","Score":null,"Total":0}
引用次数: 0
摘要
背景:通过可靠的成像方法准确区分帕金森病(PD)和健康对照组(HCs)对于适当的治疗干预至关重要。然而,帕金森病的诊断因评估的主观性而受到阻碍。我们的目标是开发一种自动深度学习方法,该方法可以在感度加权成像(SWI)和T2加权成像(T2WI)上分割黑质区域,并利用机器学习算法进一步区分帕金森病患者和健康对照组:在同一台 3.0-T 磁共振成像扫描仪上获取了 83 名 PD 患者和 83 名年龄和性别匹配的 HC 的磁共振成像(MRI)数据。开发了一种使用 Swin-Unet 的深度学习方法来分割 SWI 上的感兴趣体(VOI),然后将 SWI 上的 VOI 映射到相应的 T2WI 上;然后从 SWI 和 T2WI 上的 VOI 中提取特征。开发并比较了三种机器学习模型,以区分PD患者和HC患者:在 SWI 分段中,Swin-Unet 的 Dice 系数(0.832 对 0.712)优于 U-Net。机器学习模型的性能优于视觉分析(P>0.05),逻辑回归(LR)的性能最好[曲线下面积(AUC)≥0.819]且最稳定(AUC的相对标准偏差≤0.05)。测试结果显示,基于 SWI 分割的 LR 模型的 AUC 为 0.894,而基于 T2WI 分割的 LR 模型的 AUC 为 0.876。基于手动标记或自动分割的 VOI 在 T2WI、SWI 或两者的组合中没有明显差异(P>0.05)。基于自动分割的 LR 模型的 AUC 与基于手动标记的模型接近(P>0.05):我们的方法为临床上仅使用 T2WI 自动快速诊断帕金森病提供了一种强大而有用的方法。
Automatic substantia nigra segmentation with Swin-Unet in susceptibility- and T2-weighted imaging: application to Parkinson disease diagnosis.
Background: Accurately distinguishing between Parkinson disease (PD) and healthy controls (HCs) through reliable imaging method is crucial for appropriate therapeutic intervention. However, PD diagnosis is hindered by the subjective nature of the evaluation. We aimed to develop an automatic deep-learning method that can segment the substantia nigra areas on susceptibility-weighted imaging (SWI) and T2-weighted imaging (T2WI) and further differentiate patients with PD from HCs using a machine learning algorithm.
Methods: Magnetic resonance imaging (MRI) data from 83 patients with PD and 83 age- and sex-matched HCs were obtained on the same 3.0-T MRI scanner. A deep learning method with Swin-Unet was developed to segment volumes of interest (VOIs) on SWI and then map the VOIs on SWI to the corresponding T2WI; features were then extracted from the VOIs on SWI and T2WI. Three machine learning models were developed and compared to differentiate those with PD from HCs.
Results: Swin-Unet achieved a better Dice coefficient than did U-Net in SWI segmentation (0.832 vs. 0.712). Machine learning models outperformed visual analysis (P>0.05), and logistic regression (LR) achieved the best performance [area under the curve (AUC) ≥0.819] and the most stable (relative standard deviations in AUC ≤0.05). The test results showed that the AUC of the LR model based on SWI segmentation was 0.894 while that of the LR model based on T2WI segmentation was 0.876. There was no significant difference in VOIs based on manual labeling or automatic segmentation across T2WI, SWI, or a combination of the two (P>0.05). The AUCs of the LR model based on automatic segmentation were close to those of the model based on manual labeling (P>0.05).
Conclusions: Our approach could provide a powerful and useful method for automatically and rapidly diagnosing PD in the clinic with only T2WI.