Radiomics in Breast Cancer: In-Depth Machine Analysis of MR Images of Metastatic Spine Lesion.

IF 1.1 Q4 MEDICINE, RESEARCH & EXPERIMENTAL
V Steinhauer, N I Sergeev
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引用次数: 1

Abstract

Using mathematic criteria for image processing (radiomics) makes it possible to more accurately assess the nature of therapy-associated changes and determine the sites of maximal response. Comparison of the acquired quantitative and clinical data may assist radiologists in making the optimal decision. The aim of the study was to assess the capabilities of software operators for an in-depth analysis of metastatic spine lesion images in breast cancer.

Materials and methods: MRI data of three patients with breast cancer T2N2-3M1 receiving treatment in accordance with the accepted clinical protocols were used in our work. Spinal metastases were assessed by a radiologist and machine analysis using the Arzela variation operators. Twelve MRI examinations (4 per each patient) excluding the baseline examination have been analyzed with a follow-up period of about 3 months.

Results: The structure of the metastatically modified spine was analysed segment by segment in the sagittal and axial projections using machine image analysis operators. Rapid changes in the "complexity" of vertebrae images have been found, allowing one to suggest the efficacy of treatment in one of the three options - stabilization, improvement, progression. Changes in the vertebrae structure with a positive response to the treatment in the form of the formation of bone objects, calderas, reduction of the contrast agent circulation at the microlevel, confirmed by mathematical analysis, have been monitored. A correlation was obtained between the established changes and the level of the CA 15-3 cancer marker.

Conclusion: The study has shown a high effectiveness of machine image analysis algorithms, high correlation of the obtained results with the radiologist's report and clinical and laboratory data in 9 cases out of 12. The Pearson correlation coefficient between the classical marker and matrix filter curve was 0.8.

Abstract Image

Abstract Image

Abstract Image

乳腺癌放射组学:转移性脊柱病变MR图像的深度机器分析。
使用图像处理(放射组学)的数学标准可以更准确地评估治疗相关变化的性质,并确定最大反应的部位。比较获得的定量和临床数据可以帮助放射科医生做出最佳决策。该研究的目的是评估软件操作员对乳腺癌转移性脊柱病变图像进行深入分析的能力。材料和方法:我们的工作使用了3例T2N2-3M1乳腺癌患者的MRI资料,这些患者按照公认的临床方案接受了治疗。脊柱转移由放射科医生和使用Arzela变异算子的机器分析评估。除基线检查外,对12例MRI检查(每位患者4例)进行了分析,随访时间约为3个月。结果:利用机器图像分析算子,在矢状和轴向投影上逐段分析转移性脊柱的结构。椎骨图像“复杂性”的快速变化已经被发现,这使得人们可以在三种选择中选择一种治疗效果——稳定、改善、进展。椎骨结构的变化对治疗有积极的反应,形成骨物体,破火山口,减少微观水平上的造影剂循环,经数学分析证实,已被监测。这些变化与CA 15-3癌症标志物水平之间存在相关性。结论:本研究显示了机器图像分析算法的高有效性,12例中有9例的结果与放射科医生的报告和临床和实验室数据高度相关。经典标记与矩阵滤波曲线的Pearson相关系数为0.8。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Sovremennye Tehnologii v Medicine
Sovremennye Tehnologii v Medicine MEDICINE, RESEARCH & EXPERIMENTAL-
CiteScore
1.80
自引率
0.00%
发文量
38
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