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用于骨闪烁扫描图上骨转移自动诊断与分析的深度学习

Deep Learning for the Automatic Diagnosis and Analysis of Bone Metastasis on Bone Scintigrams.

作者信息

Liu Simin, Feng Ming, Qiao Tingting, Cai Haidong, Xu Kele, Yu Xiaqing, Jiang Wen, Lv Zhongwei, Wang Yin, Li Dan

机构信息

Department of Nuclear Medicine, Shanghai Tenth People's Hospital, Tongji University School of Medicine, Shanghai, People's Republic of China.

School of Electronic and Information Engineering, Tongji University, Shanghai, People's Republic of China.

出版信息

Cancer Manag Res. 2022 Jan 3;14:51-65. doi: 10.2147/CMAR.S340114. eCollection 2022.

Abstract

OBJECTIVE

To develop an approach for automatically analyzing bone metastases (BMs) on bone scintigrams based on deep learning technology.

METHODS

This research included a bone scan classification model, a regional segmentation model, an assessment model for tumor burden and a diagnostic report generation model. Two hundred eighty patients with BMs and 341 patients with non-BMs were involved. Eighty percent of cases were randomly extracted from two groups as training set. Remaining cases were as testing set. A deep residual convolutional neural network with different structures was used to determine whether metastatic bone lesions existed, regions of lesions were automatically segmented. Bone scan tumor burden index (BSTBI) was calculated; finally, diagnostic report could be automatically generated. The sensitivity, specificity and accuracy of classification model were compared with three physicians with different clinical experience. The Dice coefficient evaluated the effect of segmentation model and compared to the result of nnU-Net model. The correlation between BSTBI and blood alkaline phosphatase (ALP) level was analyzed to verify the efficiency of BSTBI. The performance of report generation model was evaluated by the accuracy of interpretation of report.

RESULTS

In testing set, the sensitivity, specificity and accuracy of classification model were 92.59%, 85.51% and 88.62%, respectively. The accuracy showed no statistical difference with moderately and experienced physicians and obviously outperformed the inexperienced. The Dice coefficient of BMs area was 0.7387 in segmentation stage. Based on the whole model frame, our segmentation model outperformed the nnU-Net. BSTBI value changed as the BMs changed. There was a positive correlation between BSTBI and ALP level. The accuracy of report generation model was 78.05%.

CONCLUSION

Deep learning based on automatic analysis frameworks for BMs can accurately identify BMs, preliminarily realize a fully automatic analysis process from raw data to report generation. BSTBI can be used as a quantitative evaluation indicator to assess the effect of therapy on BMs in different patients or in the same patient before and after treatment.

摘要

目的

基于深度学习技术开发一种自动分析骨闪烁扫描图上骨转移(BMs)的方法。

方法

本研究包括骨扫描分类模型、区域分割模型、肿瘤负荷评估模型和诊断报告生成模型。纳入280例骨转移患者和341例非骨转移患者。从两组中随机抽取80%的病例作为训练集。其余病例作为测试集。使用具有不同结构的深度残差卷积神经网络来确定是否存在转移性骨病变,自动分割病变区域。计算骨扫描肿瘤负荷指数(BSTBI);最后,可自动生成诊断报告。将分类模型的敏感性、特异性和准确性与三位具有不同临床经验的医生进行比较。Dice系数评估分割模型的效果,并与nnU-Net模型的结果进行比较。分析BSTBI与血碱性磷酸酶(ALP)水平之间的相关性,以验证BSTBI的有效性。通过报告解读的准确性评估报告生成模型的性能。

结果

在测试集中,分类模型的敏感性、特异性和准确性分别为92.59%、85.51%和88.62%。准确性与中级和经验丰富的医生相比无统计学差异,且明显优于经验不足的医生。分割阶段骨转移瘤区域的Dice系数为0.7387。基于整个模型框架,我们的分割模型优于nnU-Net。BSTBI值随骨转移情况而变化。BSTBI与ALP水平呈正相关。报告生成模型的准确性为78.05%。

结论

基于深度学习的骨转移自动分析框架能够准确识别骨转移,初步实现从原始数据到报告生成的全自动分析过程。BSTBI可作为定量评估指标,用于评估不同患者或同一患者治疗前后骨转移治疗效果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/310d/8740774/bf2aaf176092/CMAR-14-51-g0001.jpg

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