Wermelskirchen Silvio, Leonhardi Jakob, Höhn Anne-Kathrin, Osterhoff Georg, Schopow Nikolas, Briest Susanne, Denecke Timm, Meyer Hans-Jonas
Department of Diagnostic and Interventional Radiology, University of Leipzig, Leipzig, Germany.
Department of Pathology, University Hospital Leipzig, University of Leipzig, Leipzig, Germany.
Breast Cancer (Auckl). 2025 Jan 29;19:11782234241305886. doi: 10.1177/11782234241305886. eCollection 2025.
Texture analysis has the potential to deliver quantitative imaging markers. Patients receiving computed tomography (CT)-guided percutaneous bone biopsies could be characterized using texture analysis derived from CT. Especially for breast cancer (BC) patients, it could be crucial to better predict the outcome of the biopsy to better reflect the immunohistochemistry status of the tumor.
The present study examined the relationship between texture features and outcomes in patients with BC receiving CT-guided bone biopsies.
This study is based on a retrospective analysis.
The present study included a total of 66 patients. All patients proceeded to undergo a CT-guided percutaneous bone biopsy, using an 11-gauge coaxial needle. Clinical and imaging characteristics as well as CT texture analysis were included in the analysis. Logistic regression analysis was performed to predict negative biopsy results.
Overall, 33 patients had osteolytic metastases (50%) and 33 had osteoblastic metastases (50%). The overall positivity rate for the biopsy was 75%. The clinical model exhibited a predictive accuracy for a positive biopsy result, as indicated by an area under the curve (AUC) of 0.73 [95% confidence interval (CI) = 0.63-0.83]. Several CT texture features were different between Luminal A and Luminal B cancers; the best discrimination was reached for "WavEnHH_s-3" with a -value of .002. When comparing triple-negative to non-triple-negative cancers, several CT texture features were different, the best discrimination achieved "S(5,5)SumVarnc" with a -value of .01. For the Her 2 discrimination, only 3 parameters reached statistical significance, "S(4,-4)SumOfSqs" with a -value of .01.
The utilization of CT texture features may facilitate a more accurate characterization of bone metastases in patients with BC. There is the potential to predict the immunohistochemical subtype with a high degree of accuracy. The identified parameters may prove useful in clinical decision-making and could help to identify patients at risk of a negative biopsy result.
纹理分析有潜力提供定量成像标记物。接受计算机断层扫描(CT)引导下经皮骨活检的患者可通过源自CT的纹理分析进行特征描述。特别是对于乳腺癌(BC)患者,更好地预测活检结果以更准确反映肿瘤的免疫组化状态可能至关重要。
本研究探讨了接受CT引导下骨活检的BC患者纹理特征与活检结果之间的关系。
本研究基于回顾性分析。
本研究共纳入66例患者。所有患者均使用11号同轴针进行CT引导下经皮骨活检。分析纳入临床和影像特征以及CT纹理分析。进行逻辑回归分析以预测活检阴性结果。
总体而言,33例患者有溶骨性转移(50%),33例有成骨性转移(50%)。活检的总体阳性率为75%。临床模型对活检阳性结果显示出预测准确性,曲线下面积(AUC)为0.73 [95%置信区间(CI)= 0.63 - 0.83]。Luminal A型和Luminal B型癌症之间的几个CT纹理特征不同;“WavEnHH_s - 3”的区分效果最佳,P值为0.002。在比较三阴性与非三阴性癌症时,几个CT纹理特征不同,区分效果最佳的是“S(5,5)SumVarnc”,P值为0.01。对于Her 2区分,只有3个参数达到统计学意义,“S(4, - 4)SumOfSqs”的P值为0.01。
利用CT纹理特征可能有助于更准确地描述BC患者的骨转移情况。有潜力高度准确地预测免疫组化亚型。所确定的参数可能在临床决策中证明有用,并有助于识别活检结果为阴性的风险患者。