Department of Gastroenterology and Hepatology & Department of Public Health, Erasmus MC University Medical Center, 's Gravendijkwal 230, 3015 CE Rotterdam, The Netherlands.
J Med Genet. 2009 Nov;46(11):745-51. doi: 10.1136/jmg.2009.066589. Epub 2009 Jun 18.
BACKGROUND/AIMS: The identification of Lynch syndrome is hampered by the absence of specific diagnostic features and underutilisation of genetic testing. Prediction models have therefore been developed, but they have not been validated for a clinical genetic setting. The aim of the present study was to evaluate the usefulness of currently available prediction models.
The authors collected data of 321 index probands who were referred to the department of clinical genetics of the Erasmus Medical Center because of a family history of colorectal cancer. These data were used as input for five previously published models. External validity was assessed by discriminative ability (AUC: area under the receiver operating characteristic curve) and calibration. For further insight, predicted probabilities were categorised with cut-offs of 5%, 10%, 20% and 40%. Furthermore, costs of different testing strategies were related to the number of extra detected mutation carriers.
Of the 321 index probands, 66 harboured a germline mutation. All models discriminated well between high risk and low risk index probands (AUC 0.82-0.84). Calibration was well for the Premm(1,2) and Edinburgh model, but poor for the other models. Cut-offs could be found for the prediction models where costs could be saved while missing only few mutations.
The Edinburgh and Premm(1,2) model were the models with the best performance for an intermediate to high risk setting. These models may well be of use in clinical practice to select patients for further testing of mismatch repair gene mutations.
背景/目的:由于缺乏特异性诊断特征和遗传检测利用不足,林奇综合征的鉴定受到阻碍。因此,已经开发了预测模型,但它们尚未在临床遗传环境中得到验证。本研究的目的是评估当前可用预测模型的有用性。
作者收集了 321 名索引先证者的数据,这些先证者因家族结直肠癌病史而被转诊至伊拉斯谟医疗中心的临床遗传学系。这些数据被用作五个先前发表的模型的输入。通过区分能力(AUC:接收者操作特征曲线下的面积)和校准来评估外部有效性。为了进一步深入了解,预测概率被分类为 5%、10%、20%和 40%的截断值。此外,不同测试策略的成本与额外检测到的突变携带者数量相关。
在 321 名索引先证者中,有 66 名携带有胚系突变。所有模型在高风险和低风险索引先证者之间都能很好地区分(AUC 0.82-0.84)。Premm(1,2)和爱丁堡模型的校准情况良好,但其他模型的校准情况较差。对于那些可以节省成本而仅错过少数突变的预测模型,可以找到截断值。
在中高危环境中,爱丁堡和 Premm(1,2)模型是表现最好的模型。这些模型可能在临床实践中用于选择进一步检测错配修复基因突变的患者。