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一种用于稳健、准确和自动分类双荧光和四簇液滴数字 PCR 数据的密度分水岭算法 (DWA) 方法。

A density-watershed algorithm (DWA) method for robust, accurate and automatic classification of dual-fluorescence and four-cluster droplet digital PCR data.

机构信息

Department of Biomedical Engineering, School of Medicine, Tsinghua University, Beijing, China.

出版信息

Analyst. 2019 Aug 5;144(16):4757-4771. doi: 10.1039/c9an00637k.

Abstract

Droplet digital PCR (ddPCR) is a single-molecule amplification technology with broad applications in precision medicine and clinical diagnosis. Dual-fluorescence and four-cluster ddPCR (two/four-ddPCR) assay is an effective way to quantify copy numbers. Currently, two/four-ddPCR data are usually classified with manual thresholds. For clinical applications, automatic and accurate methods are required to avoid subjectivity in diagnosis. Although there are some automatic classification algorithms, their accuracy and robustness still need to be improved to meet the needs of clinical diagnosis. Therefore, a new method is in high demand to automatically classify two/four-ddPCR data in an accurate and robust way. Here, a novel density-watershed algorithm (DWA) method was developed for the accurate, automatic and unsupervised classification of two/four-ddPCR data. First, data gridding was applied to a scatter plot of the fluorescence signal intensity to calculate data densities. Based on the data densities, the watershed algorithm was used to divide the gridded scatter plot into isolated regions automatically. Next, an optimal cluster pattern was determined based on these isolated regions, and excess regions were merged. Finally, the two/four-ddPCR data were classified based on the merged regions, and DNA template copy numbers were calculated accordingly. Using the DWA method for the quantification of both wild types and mutants of epidermal growth factor receptor (EGFR) L858R and T790M, the classification results were highly consistent with expectations, and significantly better than commonly-used automatic algorithms for now. The computed template copy numbers scaled proportionally to the relative concentration of input templates (r2 > 0.998) in four orders of magnitude with a good reproducibility, and achieved a limit of detection over 40 times lower than the commonly-used automatic algorithms. Furthermore, the DWA method was validated on 254 clinical DNA samples derived from frozen tissues, formalin-fixed paraffin-embedded tissues and peripheral blood. In most cases, the DWA method derived accurate and valid classification results. This highly effective DWA method may be widely used for automatically classifying two/four-ddPCR data, and it will greatly promote the application of ddPCR in clinical diagnosis.

摘要

液滴数字 PCR(ddPCR)是一种单分子扩增技术,在精准医学和临床诊断中有广泛的应用。双荧光和四簇 ddPCR(two/four-ddPCR)检测是一种有效的定量拷贝数的方法。目前,two/four-ddPCR 数据通常通过手动阈值进行分类。对于临床应用,需要自动和准确的方法来避免诊断中的主观性。虽然有一些自动分类算法,但它们的准确性和稳健性仍需要提高,以满足临床诊断的需求。因此,需要一种新的方法来以准确和稳健的方式自动分类 two/four-ddPCR 数据。在这里,我们开发了一种新的密度分水岭算法(DWA),用于准确、自动和无监督地分类 two/four-ddPCR 数据。首先,将数据网格化应用于荧光信号强度的散点图中,以计算数据密度。基于数据密度,分水岭算法用于自动将网格化的散点图划分为孤立区域。接下来,基于这些孤立区域确定最佳聚类模式,并合并多余区域。最后,根据合并区域对 two/four-ddPCR 数据进行分类,并相应地计算 DNA 模板拷贝数。使用 DWA 方法对表皮生长因子受体(EGFR)L858R 和 T790M 的野生型和突变型进行定量,分类结果与预期高度一致,明显优于目前常用的自动算法。在所研究的四个数量级范围内,计算得到的模板拷贝数与输入模板的相对浓度呈比例关系(r2>0.998),具有良好的重现性,检测限比常用的自动算法低 40 多倍。此外,我们还在 254 份来自冷冻组织、福尔马林固定石蜡包埋组织和外周血的临床 DNA 样本上验证了 DWA 方法。在大多数情况下,DWA 方法得到了准确和有效的分类结果。这种高效的 DWA 方法可能会被广泛应用于自动分类 two/four-ddPCR 数据,这将极大地促进 ddPCR 在临床诊断中的应用。

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