Division of Primary Care, Tower Building, University Park, Nottingham NG2 7RD, UK.
Br J Gen Pract. 2013 Jan;63(606):e1-10. doi: 10.3399/bjgp13X660724.
Early diagnosis of cancer could improve survival so better tools are needed.
To derive an algorithm to estimate absolute risks of different types of cancer in men incorporating multiple symptoms and risk factors.
Cohort study using data from 452 UK QResearch® general practices for development and 224 for validation.
Included patients were males aged 25-89 years. The primary outcome was incident diagnosis of cancer over the next 2 years (lung, colorectal, gastro-oesophageal, pancreatic, renal, blood, prostate, testicular, other cancer). Factors examined were: 'red flag' symptoms such as weight loss, abdominal distension, abdominal pain, indigestion, dysphagia, abnormal bleeding, lumps; general symptoms such as tiredness, constipation; and risk factors including age, family history, smoking, alcohol intake, deprivation score and medical conditions. Multinomial logistic regression was used to develop a risk equation to predict cancer type. Performance was tested on a separate validation cohort.
There were 22 521 cancers from 1 263 071 males in the derivation cohort. The final model included risk factors (age, BMI, chronic pancreatitis, COPD, diabetes, family history, alcohol, smoking, deprivation); 22 symptoms, anaemia and venous thrombo-embolism. The model was well calibrated with good discrimination. The receiver operator curve statistics values were: lung (0.92), colorectal (0.92), gastro-oesophageal (0.93), pancreas (0.89), renal (0.94), prostate (0.90) blood (0.83, testis (0.82); other cancers (0.86). The 10% of males with the highest risks contained 59% of all cancers diagnosed over 2 years.
The algorithm has good discrimination and could be used to identify those at highest risk of cancer to facilitate more timely referral and investigation.
早期诊断癌症可以提高生存率,因此需要更好的工具。
开发一种算法,以估计男性多种症状和危险因素下不同类型癌症的绝对风险。
使用来自英国 QResearch® 452 家普通实践的数据进行开发,224 家用于验证的队列研究。
纳入患者为 25-89 岁男性。主要结局为未来 2 年内癌症的确诊。(肺癌、结直肠癌、胃食管、胰腺癌、肾癌、血液癌、前列腺癌、睾丸癌、其他癌症)。检查的因素包括:体重减轻、腹胀、腹痛、消化不良、吞咽困难、异常出血、肿块等“红旗”症状;疲劳、便秘等一般症状;以及年龄、家族史、吸烟、饮酒、贫困评分和医疗状况等危险因素。使用多项逻辑回归开发预测癌症类型的风险方程。在独立的验证队列中测试性能。
在推导队列中,有 1263071 名男性中的 22521 例癌症。最终模型包括危险因素(年龄、BMI、慢性胰腺炎、COPD、糖尿病、家族史、酒精、吸烟、贫困);22 个症状、贫血和静脉血栓栓塞。该模型具有良好的校准和良好的辨别力。接收者操作曲线统计值为:肺癌(0.92)、结直肠癌(0.92)、胃食管(0.93)、胰腺(0.89)、肾脏(0.94)、前列腺(0.90)、血液(0.83)、睾丸(0.82);其他癌症(0.86)。风险最高的 10%男性包含了 2 年内诊断出的所有癌症的 59%。
该算法具有良好的辨别力,可以用来识别那些癌症风险最高的人群,以便更及时地转介和调查。