Discrimination Between Glioblastoma and Solitary Brain Metastasis Using Conventional MRI and Diffusion-Weighted Imaging Based on a Deep Learning Algorithm

被引:0
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作者
Qingqing Yan
Fuyan Li
Yi Cui
Yong Wang
Xiao Wang
Wenjing Jia
Xinhui Liu
Yuting Li
Huan Chang
Feng Shi
Yuwei Xia
Qing Zhou
Qingshi Zeng
机构
[1] The First Affiliated Hospital of Shandong First Medical University & Shandong Provincial Qianfoshan Hospital,Department of Radiology
[2] Shandong First Medical University,Department of Radiology
[3] Shandong Provincial Hospital affiliated to Shandong First Medical University,Department of Radiology
[4] Qilu Hospital of Shandong University,Department of Radiology
[5] Shandong Cancer Hospital and Institute,undefined
[6] Shandong First Medical University,undefined
[7] Shandong Academy of Medical Sciences,undefined
[8] Jining NO.1 People’s Hospital,undefined
[9] Shanghai United Imaging Intelligence,undefined
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关键词
Glioblastoma; Brain metastasis; Deep learning; Magnetic resonance imaging; Diffusion-weighted imaging;
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学科分类号
摘要
This study aims to develop and validate a deep learning (DL) model to differentiate glioblastoma from single brain metastasis (BM) using conventional MRI combined with diffusion-weighted imaging (DWI). Preoperative conventional MRI and DWI of 202 patients with solitary brain tumor (104 glioblastoma and 98 BM) were retrospectively obtained between February 2016 and September 2022. The data were divided into training and validation sets in a 7:3 ratio. An additional 32 patients (19 glioblastoma and 13 BM) from a different hospital were considered testing set. Single-MRI-sequence DL models were developed using the 3D residual network-18 architecture in tumoral (T model) and tumoral + peritumoral regions (T&P model). Furthermore, the combination model based on conventional MRI and DWI was developed. The area under the receiver operating characteristic curve (AUC) was used to assess the classification performance. The attention area of the model was visualized as a heatmap by gradient-weighted class activation mapping technique. For the single-MRI-sequence DL model, the T2WI sequence achieved the highest AUC in the validation set with either T models (0.889) or T&P models (0.934). In the combination models of the T&P model, the model of DWI combined with T2WI and contrast-enhanced T1WI showed increased AUC of 0.949 and 0.930 compared with that of single-MRI sequences in the validation set, respectively. And the highest AUC (0.956) was achieved by combined contrast-enhanced T1WI, T2WI, and DWI. In the heatmap, the central region of the tumoral was hotter and received more attention than other areas and was more important for differentiating glioblastoma from BM. A conventional MRI-based DL model could differentiate glioblastoma from solitary BM, and the combination models improved classification performance.
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页码:1480 / 1488
页数:8
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