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Predicting the Reasons of Customer Complaints: A First Step Toward Anticipating Quality Issues of In Vitro Diagnostics Assays with Machine Learning

机译:预测客户投诉的原因:迈向通过机器学习预测体外诊断分析质量问题的第一步

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Background Vendors in the health care industry produce diagnostic systems that, through a secured connection, allow them to monitor performance almost in real time. However, challenges exist in analyzing and interpreting large volumes of noisy quality control (QC) data. As a result, some QC shifts may not be detected early enough by the vendor, but lead a customer to complain. Objective The aim of this study was to hypothesize that a more proactive response could be designed by utilizing the collected QC data more efficiently. Our aim is therefore to help prevent customer complaints by predicting them based on the QC data collected by in vitro diagnostic systems. Methods QC data from five select in vitro diagnostic assays were combined with the corresponding database of customer complaints over a period of 90 days. A subset of these data over the last 45 days was also analyzed to assess how the length of the training period affects predictions. We defined a set of features used to train two classifiers, one based on decision trees and the other based on adaptive boosting, and assessed model performance by cross-validation. Results The cross-validations showed classification error rates close to zero for some assays with adaptive boosting when predicting the potential cause of customer complaints. Performance was improved by shortening the training period when the volume of complaints increased. Denoising filters that reduced the number of categories to predict further improved performance, as their application simplified the prediction problem. Conclusions This novel approach to predicting customer complaints based on QC data may allow the diagnostic industry, the expected end user of our approach, to proactively identify potential product quality issues and fix these before receiving customer complaints. This represents a new step in the direction of using big data toward product quality improvement.
机译:背景技术卫生保健行业的供应商生产诊断系统,该系统通过安全连接使他们几乎可以实时监控性能。但是,在分析和解释大量的噪声质量控制(QC)数据时,存在挑战。结果,供应商可能没有及早发现某些质量控制转移,但却导致客户抱怨。目的这项研究的目的是假设可以通过更有效地利用收集的QC数据来设计更主动的反应。因此,我们的目标是根据体外诊断系统收集的质量控制数据来预测客户的投诉,从而帮助防止客户投诉。方法在90天内,将来自五种选择的体外诊断测定的质量控制数据与相应的客户投诉数据库相结合。还分析了过去45天中这些数据的子集,以评估训练时间的长短如何影响预测。我们定义了一组用于训练两个分类器的功能,一个基于决策树,另一个基于自适应提升,并通过交叉验证评估了模型性能。结果交叉验证显示,在预测客户投诉的潜在原因时,对于某些具有自适应增强功能的测定,分类错误率接近零。当投诉量增加时,可以通过缩短培训时间来提高绩效。降噪过滤器减少了类别的数量,以预测进一步提高的性能,因为它们的应用简化了预测问题。结论基于QC数据预测客户投诉的新颖方法可以使诊断行业(我们方法的预期最终用户)主动识别潜在的产品质量问题并在收到客户投诉之前进行修复。这代表着使用大数据改善产品质量的新步骤。

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