Leela-Arporn Rommaneeya, Ohta Hiroshi, Shimbo Genya, Hanazono Kiwamu, Osuga Tatsuyuki, Morishita Keitaro, Sasaki Noboru, Takiguchi Mitsuyoshi
Laboratory of Veterinary Internal Medicine, Department of Veterinary Clinical Sciences, Graduate School of Veterinary Medicine, Hokkaido University, Sapporo, Hokkaido 060-0818, Japan.
Faculty of Veterinary Medicine and Applied Zoology, HRH Princess Chulabhorn College of Medical Science, Chulabhorn Royal Academy, Lak Si, Bangkok 10210, Thailand.
J Vet Med Sci. 2019 Dec 18;81(12):1697-1704. doi: 10.1292/jvms.19-0278. Epub 2019 Oct 10.
Thus far, there are few computed tomography (CT) characteristics that can distinguish benign and malignant etiologies. The criteria are complex, subjective, and difficult to use in clinical applications due to the high level of experience needed. This study aimed to identify practical CT variables and their clinical relevance for broadly classifying histopathological diagnoses as benign or malignant. In this prospective study, all dogs with liver nodules or masses that underwent CT examination and subsequent histopathological diagnosis were included. Signalments, CT findings and histopathological diagnoses were recorded. Seventy liver nodules or masses in 57 dogs were diagnosed, comprising 18 benign and 52 malignant lesions. Twenty-three qualitative and quantitative CT variables were evaluated using univariate and stepwise multivariate analyses, respectively. Two variables, namely, the postcontrast enhancement pattern of the lesion in the delayed phase (heterogeneous; odds ratio (OR): 14.7, 95% confidence interval (CI): 0.82-262.03, P=0.0429) and the maximal transverse diameter of the lesion (>4.5 cm; OR: 33.3, 95% CI: 2.29-484.18, P=0.0006), were significantly related to the differentiation of benign from malignant liver lesions, with an area under the curve of 0.8910, representing an accuracy of 88.6%. These findings indicate that features from triple-phase CT can provide information for distinguishing pathological varieties of focal liver lesions and for clinical decision making. Evaluations of the maximal transverse diameter and postcontrast enhancement pattern of the lesion included simple CT features for predicting liver malignancy with high accuracy in clinical settings.
到目前为止,几乎没有计算机断层扫描(CT)特征能够区分良性和恶性病因。这些标准复杂、主观,且由于需要高水平的经验,难以在临床应用中使用。本研究旨在确定实用的CT变量及其临床相关性,以便将组织病理学诊断广泛分类为良性或恶性。在这项前瞻性研究中,纳入了所有接受CT检查并随后进行组织病理学诊断的肝脏结节或肿块的犬只。记录了信号、CT表现和组织病理学诊断。对57只犬的70个肝脏结节或肿块进行了诊断,其中包括18个良性病变和52个恶性病变。分别使用单变量和逐步多变量分析评估了23个定性和定量CT变量。有两个变量,即延迟期病变的对比增强模式(不均匀;比值比(OR):14.7,95%置信区间(CI):0.82 - 262.03,P = 0.0429)和病变的最大横径(>4.5 cm;OR:33.3,95% CI:2.29 - 484.18,P = 0.0006),与肝脏良性和恶性病变的鉴别显著相关,曲线下面积为0.8910,代表准确率为88.6%。这些发现表明,三期CT的特征可为区分局灶性肝病变的病理类型和临床决策提供信息。对病变最大横径和对比增强模式的评估包括在临床环境中预测肝脏恶性肿瘤的简单CT特征,具有较高的准确性。