利用肾肿块的三维形态特征评估肿瘤形态。

IF 0.8 Q4 UROLOGY & NEPHROLOGY Urologia Journal Pub Date : 2024-11-01 Epub Date: 2024-07-26 DOI:10.1177/03915603241261499
Fiev Dmitry, Sirota Evgeniy, Kozlov Vasiliy, Proskura Alexandra, Ismailov Khalil, Shpot Evgeny, Chernenkiy Mikhail, Puzakov Kirill, Tarasov Alexander, Korolev Dmitry, Azilgareeva Camilla, Vinarov Andrey, Butnaru Denis, Glybochko Petr, Rapoport Leonid
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引用次数: 0

摘要

目的评估经 MSCT 数据后处理的肾脏肿瘤结节的一般特征(性别、年龄和最大肿瘤大小)和三维形态计量特征与肿瘤组织学结构之间的相关性;提出一种根据一般特征和形态计量特征评估肾脏恶性程度的公式:共有 304 例单侧单发肾肿瘤患者接受了腹腔镜(后腹腔镜)或机器人肾部分或根治性切除术。术前进行肾脏造影剂增强 MSCT,然后进行肿瘤三维建模。对肾脏肿瘤的三维模型、形态计量特征和组织学结构进行了分析。形态计量特征包括病变的侧位、分段位置、肿瘤所在的表面、肿瘤侵入肾脏的深度以及肿瘤的形状:在 304 名患者中,254 人(83.6%)患有恶性肾肿瘤,50 人(16.4%)患有良性肾肿瘤。在 254 名患者中,共有 231 名患者(90.9%)接受了恶性肿瘤分化程度评估。男性患恶性肿瘤的比例高于女性(P = 0.029):根据对性别和肾脏病变形式等预测因素的分析,得出的逻辑模型对肾脏肿瘤恶性程度的预测正确率很高(87.6%)。
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Tumor morphology evaluation using 3D-morphometric features of renal masses.

Objective: To assess the correlation between the general (gender, age, and maximum tumor size) and 3D morphotopometric features of the renal tumor node, following the MSCT data post-processing, and the tumor histological structure; to propose an equation allowing for kidney malignancy assessment based on general and morphometric features.

Materials and methods: In total, 304 patients with unilateral solitary renal neoplasms underwent laparoscopic (retroperitoneoscopic) or robotic partial or radical nephrectomy. Before the procedure, kidney contrast-enhanced MSCT followed by the tumor 3D-modeling was performed. 3D model of the kidney tumor, and its morphotopometric features, and histological structure were analyzed. The morphotopometric ones include the side of the lesion, location by segments, the surface where the tumor, the depth of the tumor invasion into the kidney, and the shape of tumor.

Results: Out of 304 patients, 254 (83.6%) had malignant kidney tumors and 50 (16.4%) benign kidney tumors. In total, 231 patients, out of 254 (90.9%) were assessed for the degree of malignant tumor differentiation. Malignant tumors were more frequent in men than in women (p < 0.001). Mushroom-shaped tumors were the most common shapes among benign renal masses (35.2%). The most common malignant kidney tumors had spherical with a partially uneven surface (27.6%), multinodular (tuberous (27.2%)), and spherical with a conical base (24.8%) shapes. Logistic regression model enabled the development of prognostic equation for tumor malignancy prediction ("low" or "high"). The univariate analysis revealed the correlation only between high differentiation (G1) and a spherical tumor with a conical base (p = 0.029).

Conclusion: The resulting logistic model, based on the analysis of such predictors as gender and form of kidney lesions, demonstrated a large share (87.6%) of correct predictions of the kidney tumor malignancy.

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来源期刊
Urologia Journal
Urologia Journal UROLOGY & NEPHROLOGY-
CiteScore
0.60
自引率
12.50%
发文量
66
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