Cao Weiguo, Pomeroy Marc J, Liang Zhengrong, Gao Yongfeng, Shi Yongyi, Tan Jiaxing, Han Fangfang, Wang Jing, Ma Jianhua, Lu Hongbin, Abbasi Almas F, Pickhardt Perry J
Department of Radiology, Stony Brook University, Stony Brook, NY, 11794, USA.
Departments of Radiology and Biomedical Engineering, Stony Brook University, Stony Brook, NY, 11794, USA.
J Imaging Inform Med. 2025 Apr;38(2):804-818. doi: 10.1007/s10278-024-01178-8. Epub 2024 Aug 20.
The elasticity of soft tissues has been widely considered a characteristic property for differentiation of healthy and lesions and, therefore, motivated the development of several elasticity imaging modalities, for example, ultrasound elastography, magnetic resonance elastography, and optical coherence elastography to directly measure the tissue elasticity. This paper proposes an alternative approach of modeling the elasticity for prior knowledge-based extraction of tissue elastic characteristic features for machine learning (ML) lesion classification using computed tomography (CT) imaging modality. The model describes a dynamic non-rigid (or elastic) soft tissue deformation in differential manifold to mimic the tissues' elasticity under wave fluctuation in vivo. Based on the model, a local deformation invariant is formulated using the 1 and 2 order derivatives of the lesion volumetric CT image and used to generate elastic feature map of the lesion volume. From the feature map, tissue elastic features are extracted and fed to ML to perform lesion classification. Two pathologically proven image datasets of colon polyps and lung nodules were used to test the modeling strategy. The outcomes reached the score of area under the curve of receiver operating characteristics of 94.2% for the polyps and 87.4% for the nodules, resulting in an average gain of 5 to 20% over several existing state-of-the-art image feature-based lesion classification methods. The gain demonstrates the importance of extracting tissue characteristic features for lesion classification, instead of extracting image features, which can include various image artifacts and may vary for different protocols in image acquisition and different imaging modalities.
软组织的弹性已被广泛认为是区分健康组织和病变组织的一个特征属性,因此推动了多种弹性成像模态的发展,例如超声弹性成像、磁共振弹性成像和光学相干弹性成像,以直接测量组织弹性。本文提出了一种替代方法,即基于先验知识对弹性进行建模,以便使用计算机断层扫描(CT)成像模态提取组织弹性特征,用于基于机器学习(ML)的病变分类。该模型在微分流形中描述动态非刚性(或弹性)软组织变形,以模拟体内波动下组织的弹性。基于该模型,利用病变体积CT图像的一阶和二阶导数制定局部变形不变量,并用于生成病变体积的弹性特征图。从特征图中提取组织弹性特征,并将其输入到机器学习中进行病变分类。使用两个经病理证实的结肠息肉和肺结节图像数据集来测试该建模策略。结果显示,息肉的受试者操作特征曲线下面积得分达到94.2%,结节为87.4%,与几种现有的基于图像特征的先进病变分类方法相比,平均增益为5%至20%。这一增益表明了提取组织特征用于病变分类的重要性,而不是提取图像特征,因为图像特征可能包括各种图像伪影,并且在图像采集的不同协议和不同成像模态下可能会有所不同。