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基于深度学习的肿瘤内和肿瘤周围特征用于鉴别眼附属器淋巴瘤和特发性眼眶炎症。

Deep learning-based intratumoral and peritumoral features for differentiating ocular adnexal lymphoma and idiopathic orbital inflammation.

作者信息

Zhang Huachen, Xu Li, Yang Lijuan, Su Zhiming, Kang Haobei, Xie Xiaoyang, He Xuelei, Zhang Hui, Zhang Qiufang, Cao Xin, He Xiaowei, Zhang Tao, Zhao Fengjun

机构信息

Xi'an Key Lab of Radiomics and Intelligent Perception, School of Information Science and Technology, Northwest University, Xi'an, China.

Department of Computer Science and Technology, Baotou Medical College, Inner Mongolia University of Science and Technology, Baotou, China.

出版信息

Eur Radiol. 2025 Mar;35(3):1276-1289. doi: 10.1007/s00330-024-11275-5. Epub 2024 Dec 19.

Abstract

OBJECTIVES

To evaluate the value of deep-learning-based intratumoral and peritumoral features for differentiating ocular adnexal lymphoma (OAL) and idiopathic orbital inflammation (IOI).

METHODS

Nighty-seven patients with histopathologically confirmed OAL (n = 43) and IOI (n = 54) were randomly divided into training (n = 79) and test (n = 18) groups. DL-based intratumoral and peritumoral features were extracted to characterize the differences in heterogeneity and tissue invasion between different lesions, respectively. Subsequently, an attention-based fusion model was employed to fuse the features extracted from intra- and peritumoral regions and multiple MR sequences. A comprehensive comparison was conducted among different methods for extracting intratumoral, peritumoral, and fused features. Area under the curve (AUC) was used to evaluate the performance under a 10-fold cross-validation and independent test. Chi-square and student's t-test were used to compare discrete and continuous variables, respectively.

RESULTS

Fused intra-peritumoral features achieved AUC values of 0.870-0.930 and 0.849-0.924 on individual MR sequences in the validation and test sets, respectively. This was significantly higher than those using intratumoral features (p < 0.05), but not significantly different than those using peritumoral features (p > 0.05). By combining multiple MR sequences, AUC values of the intra-peritumoral features were boosted to 0.943 and 0.940, higher than those obtained from each sequence alone. Moreover, intra-peritumoral features yielded higher AUC values compared to entire orbital cone features extracted by either the intra- or the peritumoral DL model, although no significant difference was found from the latter (p > 0.05).

CONCLUSION

DL-based intratumoral, peritumoral, and especially fused intra-peritumoral features may help differentiate between OAL and IOI.

KEY POINTS

Question What is the diagnostic value of the peritumoral region and its combination with the intratumoral region for radiomic analysis of orbital lymphoproliferative disorders? Findings Fused intra- and peritumoral features achieved significantly higher performance than intratumoral features, but had no significant difference to the peritumoral features. Clinical relevance Peritumoral contextual features, which characterize the invasion patterns of orbital lesions within the surrounding areas of the entire orbital cone, might serve as an independent imaging marker for differentiating between OAL and IOI.

摘要

目的

评估基于深度学习的肿瘤内及瘤周特征在鉴别眼附属器淋巴瘤(OAL)和特发性眼眶炎症(IOI)中的价值。

方法

97例经组织病理学确诊的OAL(n = 43)和IOI(n = 54)患者被随机分为训练组(n = 79)和测试组(n = 18)。提取基于深度学习的肿瘤内及瘤周特征,分别用于表征不同病变在异质性和组织侵袭方面的差异。随后,采用基于注意力的融合模型融合从肿瘤内和瘤周区域以及多个磁共振序列中提取的特征。对提取肿瘤内、瘤周及融合特征的不同方法进行了全面比较。曲线下面积(AUC)用于评估在10倍交叉验证和独立测试下的性能。分别使用卡方检验和学生t检验比较离散变量和连续变量。

结果

融合的瘤内-瘤周特征在验证集和测试集的单个磁共振序列上分别获得了0.870 - 0.930和0.849 - 0.924的AUC值。这显著高于使用肿瘤内特征的AUC值(p < 0.05),但与使用瘤周特征的AUC值无显著差异(p > 0.05)。通过组合多个磁共振序列,瘤内-瘤周特征的AUC值提高到了0.943和0.94个0,高于单独从每个序列获得的值。此外,与通过肿瘤内或瘤周深度学习模型提取的整个眼眶圆锥特征相比,瘤内-瘤周特征产生了更高的AUC值,尽管与后者无显著差异(p > 0.05)。

结论

基于深度学习的肿瘤内、瘤周特征,尤其是融合的瘤内-瘤周特征可能有助于鉴别OAL和IOI。

关键点

问题 瘤周区域及其与肿瘤内区域的组合在眼眶淋巴增生性疾病的放射组学分析中的诊断价值是什么? 发现 融合的瘤内和瘤周特征的性能显著高于肿瘤内特征,但与瘤周特征无显著差异。 临床意义 瘤周背景特征表征了整个眼眶圆锥周围区域内眼眶病变的侵袭模式,可能作为鉴别OAL和IOI的独立影像标志物。

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