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Prediction of findings at screening colonoscopy using a machine learning algorithm based on complete blood counts (ColonFlag)

机译:使用基于全血细胞计数的机器学习算法(ColonFlag)进行结肠镜检查时的发现预测

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摘要

Adenomatous polyps are a common precursor lesion for colorectal cancer. ColonFlag is a machine- learning-based algorithm that uses basic patient information and complete blood cell counts (CBC) to identify individuals at elevated risk of colorectal cancer for intensified screening. The purpose of this study was to determine whether ColonFlag is also able to predict the presence of high risk adenomatous polyps at colonoscopy. This study was conducted at a large colon cancer screening center in Calgary, Alberta. The study population included asymptomatic individuals between the ages of 50 and 75 who underwent a screening colonoscopy between January 2013 and June 2015. All subjects had at least one CBC result within the year prior to colonoscopy. Based on age, sex, red blood cell parameters, inflammatory cells and platelets, the ColonFlag algorithm generated a score from 0 to 100. We compared the ability of the ColonFlag test result to discriminate between individuals who were found to have a high risk polyp and those with a normal colonoscopy. Among the 17,676 individuals who underwent a screening colonoscopy there were 1,014 found to have a high risk precancerous lesion (5.7%) and 60 were found to have colorectal cancer (0.3%). At a specificity of 95%, the odds ratio for a positive ColonFlag was 2.0 for those with an advanced precancerous lesion compared with those with a normal colonoscopy. The odds ratio did not vary according to patient subgroup, colorectal cancer location or stage. ColonFlag is a passive test that can use routine blood test results to help identify individuals at elevated risk for high risk precancerous polyps as well as frank colorectal cancer. These individuals may be targeted in an effort to achieve greater compliance with conventional screening tests.
机译:腺瘤性息肉是结直肠癌的常见前体病变。 ColonFlag是一种基于机器学习的算法,使用基本的患者信息和完整的血细胞计数(CBC)来识别大肠癌风险较高的个体,以进行强化筛查。这项研究的目的是确定ColonFlag是否还能在结肠镜检查中预测高危腺瘤性息肉的存在。这项研究是在艾伯塔省卡尔加里的一家大型结肠癌筛查中心进行的。研究人群包括年龄在50至75岁之间的无症状个体,这些个体在2013年1月至2015年6月之间接受了结肠镜检查。所有受试者在结肠镜检查前一年内至少有一项CBC结果。根据年龄,性别,红细胞参数,炎性细胞和血小板,CollowFlag算法得出的分数为0到100。我们比较了ColonFlag测试结果区分高息肉息肉和高息肉个体的能力。结肠镜检查正常者。在接受结肠镜检查的17676名患者中,有1,014名被发现患有高风险的癌前病变(5.7%),而发现60名患有结直肠癌(0.3%)。在具有95%的特异性的情况下,与正常结肠镜检查相比,癌前期病变晚期的结肠癌阳性阳性率比值为2.0。优势比没有根据患者亚组,结肠直肠癌的位置或分期而变化。 ColonFlag是一种被动测试,可以使用常规血液测试结果来帮助识别高风险的高风险癌前息肉以及坦率的结直肠癌患者。这些人可能会成为目标,以努力更好地遵守常规筛查测试。

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