Department of Radiology, the First Affiliated Hospital of Guangzhou Medical University, Guangzhou, Guangdong, China.
School of Biomedical Engineering, Southern Medical University, Guangzhou, Guangdong, China.
Med Phys. 2023 Feb;50(2):661-674. doi: 10.1002/mp.16154. Epub 2023 Jan 7.
Urinary stones comprise both single and mixed compositions. Knowledge of the stone composition helps the urologists choose appropriate medical interventions for patients. The parameters from the spectral computerized tomography (CT) analysis have potential values for identification of the urinary stone compositions.
The present study aims to identify the compositions of urinary stones in vivo using parameters from spectral CT and machine learning, based on multi-label classification modeling.
This retrospective study collected 252 urinary stone samples with single/mixed compositions (including carbapatite [CP], calcium oxalate monohydrate [COM], calcium oxalate dehydrate [COD], uric acid [UA], and struvite [STR]), which were confirmed by ex vivo infrared spectroscopy. Parameters were extracted from an energy spectrum analysis (ESA) of the spectral CT, including the effective atomic number (Z ), Z histogram, CT values at a given x-ray energy level, and material densities. These ESA parameters were utilized for composition analysis via a multi-label classification fusion framework, where 250 multi-label models were built and the classification decisions from the top performance models were integrated by a multi-criterion weighted fusion (MCWF) approach in order to reach a consensus prediction. An example-based metric and label-based metric were used for global and label-wise accuracy evaluations, respectively. The top-ranked parameters associated with discriminating the stone composition were also identified.
The multi-label classification fusion framework achieved an overall of 81.2%, with of 86.7% (CP), 90.6% (COM), 80.6% (COD), 95.0% (UA), and 94.4% (STR) for each composition on the independent testing cohort 1, and of 76.4% with of 80.5% (CP), 88.7% (COM), 74.9% (COD), 94.4% (UA), and 98.5% (STR) on the independent testing cohort 2.
The parameters extracted from the ESA on spectral CT can be utilized to characterize single or mixed stone compositions via multi-label classification modeling. The generalization capability of the proposed methodology still requires further verification.
尿结石包括单成分和混合成分。了解结石成分有助于泌尿科医生为患者选择适当的医疗干预措施。光谱计算机断层扫描(CT)分析的参数具有识别尿结石成分的潜在价值。
本研究旨在通过多标签分类建模,基于光谱 CT 和机器学习,利用参数识别体内尿结石的成分。
本回顾性研究共收集了 252 例单成分/混合成分(包括碳磷灰石[CP]、一水合草酸钙[COM]、二水合草酸钙[COD]、尿酸[UA]和鸟粪石[STR])的尿结石样本,这些成分均通过离体红外光谱法得到证实。从光谱 CT 的能谱分析(ESA)中提取参数,包括有效原子序数(Z)、Z 直方图、给定 X 射线能级的 CT 值和材料密度。利用这些 ESA 参数,通过多标签分类融合框架进行成分分析,共构建了 250 个多标签模型,并通过多准则加权融合(MCWF)方法对来自性能最佳模型的分类决策进行整合,以达成共识预测。采用基于实例的度量 和基于标签的度量 分别对全局和标签级精度进行评估。还确定了与区分结石成分相关的排名最高的参数。
多标签分类融合框架在独立测试集 1 上实现了 81.2%的整体准确率,每个成分的准确率分别为 CP 86.7%、COM 90.6%、COD 80.6%、UA 95.0%和 STR 94.4%,在独立测试集 2 上实现了 76.4%的整体准确率,每个成分的准确率分别为 CP 80.5%、COM 88.7%、COD 74.9%、UA 94.4%和 STR 98.5%。
光谱 CT 的 ESA 中提取的参数可用于通过多标签分类建模来描述单成分或混合成分的结石。该方法的泛化能力仍需要进一步验证。