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Let technology do the work: Improving prediction of massive transfusion with the aid of a smartphone application

机译:让技术发挥作用:借助智能手机应用程序改善大规模输血的预测

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BACKGROUND: The use of massive transfusion protocols (MTPs) is now common in civilian trauma settings, and early activation of MTP has been shown to increase survival of MTP recipients. Numerous MTP prediction tools have been developed; however, they are often cumbersome to use efficiently or have traded predictive power for ease of use. We hypothesized that a highly accurate predictor of massive transfusion could be created and incorporated into a smartphone application that would provide an additional tool for clinicians to use in directing the resuscitation of critically injured patients. METHODS: Data from all trauma admissions since the inception of MTP were put in place at Grady Memorial Hospital in Atlanta, Georgia, were collected. A predictive model was developed using the least absolute shrinkage and selection operator (LASSO) and 10-fold cross validation. Data were resampled over 500 iterations, each using a unique and random subset of 80% of the data for model training and 20% for validation. RESULTS: The trauma registry contained 13,961 cases between 2007 and November 2011, of which 10,900 were complete and 394 received MTP. Of 44 input terms, only the mechanism of injury, heart rate, systolic blood pressure, and base deficit were found to be important predictors of massive transfusion. Our model has an area under the receiver operating curve of 0.96 (against data not used during model training) and accurately predicted MTP status for 97% of all patients. The model accurately discriminated full MTPs from MTP activations that did not meet criteria for massive transfusion. While complex to calculate by hand, our model has been packaged into a mobile application, allowing for efficient use while minimizing potential for user error. CONCLUSION: We have developed a highly accurate model for the prediction of massive transfusion that has potential to be easily accessed and used within a simple and efficient mobile application for smartphones.
机译:背景:大规模输血协议(MTP)的使用现在在平民创伤环境中很普遍,并且MTP的早期激活已显示出可以增加MTP接受者的生存率。已经开发了许多MTP预测工具。但是,它们通常难以有效地使用,或者为了易于使用已经折衷了预测能力。我们假设可以创建一个高度准确的大规模输血预测变量,并将其整合到智能手机应用程序中,这将为临床医生提供额外的工具来指导重症患者的复苏。方法:收集自MTP成立以来所有创伤入院的数据,并将其收集在佐治亚州亚特兰大的Grady Memorial医院。使用最小绝对收缩和选择算子(LASSO)和10倍交叉验证开发了预测模型。在500次迭代中对数据进行了重新采样,每次迭代均使用唯一且随机的子集,其中80%的数据用于模型训练,而20%的数据用于验证。结果:在2007年至2011年11月之间,创伤登记处包含13,961例病例,其中10,900例已经完成,394例接受了MTP。在44个输入项中,只有损伤,心率,收缩压和基础不足的机制才是大规模输血的重要预测指标。我们的模型在接收器工作曲线下的面积为0.96(与模型训练期间未使用的数据相比),并且可以准确预测97%的患者的MTP状态。该模型准确地将完整的MTP与不符合大规模输血标准的MTP激活区分开。尽管手工计算很复杂,但我们的模型已打包到移动应用程序中,从而可以高效使用,同时最大程度地减少潜在的用户错误。结论:我们已经开发出了一种用于预测大规模输血的高精度模型,该模型具有在智能手机的简单有效的移动应用程序中易于访问和使用的潜力。

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