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Prediction of leprosy in the Chinese population based on a weighted genetic risk score

机译:基于加权遗传风险评分的中国人群麻风预测

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摘要

Genome wide association studies (GWASs) have revealed multiple genetic variants associated with leprosy in the Chinese population. The aim of our study was to utilize the genetic variants to construct a risk prediction model through a weighted genetic risk score (GRS) in a Chinese set and to further assess the performance of the model in identifying higher-risk contact individuals in an independent set. The highest prediction accuracy, with an area under the curve (AUC) of 0.743 (95% confidence interval (CI): 0.729–0.757), was achieved with a GRS encompassing 25 GWAS variants in a discovery set that included 2,144 people affected by leprosy and 2,671 controls. Individuals in the high-risk group, based on genetic factors (GRS > 28.06), have a 24.65 higher odds ratio (OR) for developing leprosy relative to those in the low-risk group (GRS≤18.17). The model was then applied to a validation set consisting of 1,385 people affected by leprosy and 7,541 individuals in contact with leprosy, which yielded a discriminatory ability with an AUC of 0.707 (95% CI: 0.691–0.723). When a GRS cut-off value of 22.38 was selected with the optimal sensitivity and specificity, it was found that 39.31% of high risk contact individuals should be screened in order to detect leprosy in 64.9% of those people affected by leprosy. In summary, we developed and validated a risk model for the prediction of leprosy that showed good discrimination capabilities, which may help physicians in the identification of patients coming into contact with leprosy and are at a higher-risk of developing this condition.
机译:全基因组关联研究(GWASs)发现了中国人群中与麻风病相关的多种遗传变异。我们研究的目的是利用遗传变异通过中文集中的加权遗传风险评分(GRS)构建风险预测模型,并进一步评估该模型在独立组中识别高风险接触者中的表现。 。 GRS在发现集中包含25个GWAS变体的GRS包括2144名麻风病患者,其预测的最高准确度是曲线下面积(AUC)为0.743(95%置信区间(CI):0.729-0.757)。和2,671个控件。基于遗传因素(GRS> 28.06),高危人群的麻风发生几率(OR)比低危人群(GRS≤18.17)高24.65。然后将该模型应用于一个验证集,该验证集由1,385名受麻风病影响的人和7,541位与麻风病接触的人组成,其判别能力为AUC为0.707(95%CI:0.691-0.723)。当选择具有最佳敏感性和特异性的GRS临界值22.38时,发现应该筛查39.31%的高危接触者,以便在64.9%的麻风病患者中检出麻风病。总而言之,我们开发并验证了具有良好区分能力的麻风预测风险模型,该模型可以帮助医生识别与麻风接触的患者,并且患此病的风险更高。

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