Weyn B, Tjalma W A A, Vermeylen P, van Daele A, Van Marck E, Jacob W
Center for Electron Microscopy, University Hospital Antwerp (UIA), Antwerp, Belgium.
Clin Oncol (R Coll Radiol). 2004 Jun;16(4):307-16. doi: 10.1016/j.clon.2004.01.013.
Intratumoural micro-vessel density (IMD) has recently been shown to be a valuable prognostic tool in many tumours. Yet, IMD does not take into account the spatial arrangement of the vessels, therefore only partly reflecting the angiogenic situation. In order to describe contextual vascular relationships more accurately, we have used fractal and syntactic structure analysis (SSA) based on computerised image processing to quantify micro-vascular hot spots.
The parametric performance in prediction of patients' outcome was evaluated by univariate analysis and compared with manually obtained IMDs, whereas an automated K-nearest-neighbour (KNN) classifier searched most discriminative parametric combinations. The method is based on analysis of vascular 'hot-spots' of paraffin-embedded tissue sections of invasive cervical carcinoma, colorectal carcinoma and malignant mesothelioma.
For all three cancers, prediction of prognosis based on SSA yielded in general much higher recognition scores compared with IMD or fractal dimension. Survival of cervical carcinoma was mostly correlated with clinical data, with the vascular permeation being the only parameter with independent value. Prognosis of colorectal carcinoma is best described by SSA, completed with IMD, indicating an inverse correlation of survival time with a more irregular pattern and a slight increase in vessel number. For mesothelioma, we found a strong correlation with SSA and patients' outcome, with two SSA-parameters having independent prognostic value.
The more accurate angiogenic description obtained with SSA may be useful for further exploitation as a prognosticator in a general diagnostic pathology service.
肿瘤内微血管密度(IMD)最近已被证明是许多肿瘤中一种有价值的预后工具。然而,IMD没有考虑血管的空间排列,因此仅部分反映血管生成情况。为了更准确地描述背景血管关系,我们基于计算机图像处理使用分形和句法结构分析(SSA)来量化微血管热点。
通过单变量分析评估预测患者预后的参数性能,并与手动获得的IMD进行比较,而自动K近邻(KNN)分类器搜索最具判别力的参数组合。该方法基于对浸润性宫颈癌、结直肠癌和恶性间皮瘤石蜡包埋组织切片的血管“热点”分析。
对于所有三种癌症,与IMD或分形维数相比,基于SSA的预后预测总体上产生的识别分数要高得多。宫颈癌的生存率大多与临床数据相关,血管浸润是唯一具有独立价值的参数。结直肠癌的预后最好用SSA描述,并辅以IMD,表明生存时间与更不规则的模式和血管数量略有增加呈负相关。对于间皮瘤,我们发现SSA与患者预后有很强的相关性,两个SSA参数具有独立的预后价值。
通过SSA获得的更准确的血管生成描述可能有助于在一般诊断病理服务中作为一种预后指标进一步应用。