Williams Tom G S, Cubiella Joaquín, Griffin Simon J, Walter Fiona M, Usher-Smith Juliet A
School of Clinical Medicine, University of Cambridge, Cambridge, UK.
Department of Gastroenterology, Complexo Hospitalario Universitario de Ourense, Instituto de Investigación Biomédica Ourense-Vigo-Pontevedra, Ourense, Spain.
BMC Gastroenterol. 2016 Jun 13;16(1):63. doi: 10.1186/s12876-016-0475-7.
Colorectal cancer (CRC) is the fourth leading cause of cancer-related death in Europe and the United States. Detecting the disease at an early stage improves outcomes. Risk prediction models which combine multiple risk factors and symptoms have the potential to improve timely diagnosis. The aim of this review is to systematically identify and compare the performance of models that predict the risk of primary CRC among symptomatic individuals.
We searched Medline and EMBASE to identify primary research studies reporting, validating or assessing the impact of models. For inclusion, models needed to assess a combination of risk factors that included symptoms, present data on model performance, and be applicable to the general population. Screening of studies for inclusion and data extraction were completed independently by at least two researchers.
Twelve thousand eight hundred eight papers were identified from the literature search and three through citation searching. 18 papers describing 15 risk models were included. Nine were developed in primary care populations and six in secondary care. Four had good discrimination (AUROC > 0.8) in external validation studies, and sensitivity and specificity ranged from 0.25 and 0.99 to 0.99 and 0.46 depending on the cut-off chosen.
Models with good discrimination have been developed in both primary and secondary care populations. Most contain variables that are easily obtainable in a single consultation, but further research is needed to assess clinical utility before they are incorporated into practice.
在欧洲和美国,结直肠癌(CRC)是癌症相关死亡的第四大主要原因。早期检测该疾病可改善预后。结合多种风险因素和症状的风险预测模型有可能改善及时诊断。本综述的目的是系统地识别和比较预测有症状个体原发性CRC风险的模型的性能。
我们检索了Medline和EMBASE,以识别报告、验证或评估模型影响的原发性研究。纳入的模型需要评估包括症状在内的风险因素组合,提供模型性能数据,并适用于一般人群。纳入研究的筛选和数据提取由至少两名研究人员独立完成。
通过文献检索确定了12808篇论文,通过引文检索确定了3篇。纳入了18篇描述15种风险模型的论文。9种模型是在初级保健人群中开发的,6种是在二级保健中开发的。4种模型在外部验证研究中有良好的区分度(AUROC>0.8),根据所选的临界值,敏感性和特异性范围从0.25和0.99到0.99和0.46。
在初级和二级保健人群中都开发了具有良好区分度的模型。大多数模型包含在一次会诊中容易获得的变量,但在将它们纳入实践之前,需要进一步研究以评估其临床实用性。