计算机断层扫描在腹腔积液诊断中的作用:结构分析。

IF 3.1 4区 医学 Q2 MEDICINE, RESEARCH & EXPERIMENTAL
Csaba Csutak, Paul-Andrei Ștefan, Roxana-Adelina Lupean, Lavinia Manuela Lenghel, Carmen Mihaela Mihu, Andrei Lebovici
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引用次数: 9

摘要

提倡腹膜癌的形态学改变是不一致的,可能只在疾病的晚期才可见。然而,恶性腹水是一种早期症状,这种液体表现出特定的组织学特征。本研究旨在通过纹理分析来量化腹腔积液的计算机断层扫描(CT)图像的流体特性,并评估其在鉴别良性和恶性积液中的应用。回顾性分析52例经组织学证实为良性(29例)和恶性(23例)的腹腔积液患者,并行CT检查。使用专用软件对每次检测的非增强阶段进行流体成分的织构分析。使用Fisher和分类误差概率以及平均相关系数来选择两组10个纹理特征,并使用k-最近邻分类器测试其区分两种类型集合的能力。此外,使用单变量和受试者工作特征分析以及曲线下面积的计算来评估所选特征的诊断能力。k近邻分类器能够区分两个实体,准确率为71.15%,灵敏度为73.91%,特异性为68.97%。纹理参数排名最高的是差矩逆(p=0.0023;曲线下面积=0.748),诊断恶性肿瘤的敏感性为95.65%,特异性为44.83%。虽然成功,但良性和恶性收集物的质地评估很可能不能反映两组之间的细胞学差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis.

Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis.

Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis.

Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis.

The morphological changes advocating for peritoneal carcinomatosis are inconsistent and may be visible only in later stages of the disease. However, malignant ascites represents an early sign, and this fluid exhibits specific histological characteristics. This study aimed to quantify the fluid properties on computed tomography (CT) images of intraperitoneal effusions through texture analysis and evaluate its utility in differentiating benign and malignant collections. Fifty-two patients with histologically proven benign (n=29) and malignant (n=23) intraperitoneal effusions who underwent CT examinations were retrospectively included. Texture analysis of the fluid component was performed on the non-enhanced phase of each examination using dedicated software. Fisher and the probability of classification error and average correlation coefficients were used to select two sets of ten texture features, whose ability to distinguish between the two types of collections were tested using a k-nearest-neighbor classifier. Also, each of the selected feature's diagnostic power was assessed using univariate and receiver operating characteristics analysis with the calculation of the area under the curve. The k-nearest-neighbor classifier was able to distinguish between the two entities with 71.15% accuracy, 73.91% sensitivity, and 68.97% specificity. The highest-ranked texture parameter was Inverse Difference Moment (p=0.0023; area under the curve=0.748), based on which malignant collections could be diagnosed with 95.65% sensitivity and 44.83% specificity. Although successful, the texture assessment of benign and malignant collections most likely does not reflect the cytological differences between the two groups.

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来源期刊
Bosnian journal of basic medical sciences
Bosnian journal of basic medical sciences 医学-医学:研究与实验
CiteScore
7.40
自引率
5.90%
发文量
98
审稿时长
35 days
期刊介绍: The Bosnian Journal of Basic Medical Sciences (BJBMS) is an international, English-language, peer reviewed journal, publishing original articles from different disciplines of basic medical sciences. BJBMS welcomes original research and comprehensive reviews as well as short research communications in the field of biochemistry, genetics, immunology, microbiology, pathology, pharmacology, pharmaceutical sciences and physiology.
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