机器学习方法在预测输血后贫血狗的堆积细胞体积

C. Srinilta, Wisuwat Sunhem, Pongsak Sangunwong, Satthathan Chanchartree
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引用次数: 1

摘要

输血通常用于治疗贫血。在许多情况下,输血对生命至关重要。献血是一项自愿活动。在泰国,小动物的血液供应非常有限。因此,必须格外小心地使用血液,以尽可能多地挽救生命。输注所有血液成分的全血输注是否成功取决于输注后堆积细胞体积(PCV)的升高。兽医依靠公式来估计输血量,从而将病人的PCV提高到目标。本文试图使用机器学习模型来预测输血后贫血犬的PCV。在机器学习预测模型中使用了线性回归、XGBoost和支持向量回归算法。使用华欣Kasetsart大学兽医教学医院的输血记录来评估模型的性能。兽医常用的公式是性能比较基线。采用Wilcoxon符号秩检验评估结果的显著性差异。统计证实,在常规输入集和常规输入集中加入某些红细胞属性时,支持向量回归优于基线方法,置信区间为90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Approach in Predicting Post-Transfusion Packed Cell Volume in Anemic Dogs
Blood transfusion is commonly used to treat anemia. Blood transfusion is vital to life in many cases. Blood donation is a voluntary activity. In Thailand, blood supply for small animals are very limited. Therefore, blood must be used with extra care to save as many lives as possible. Success of whole blood transfusion where all blood components are transfused is determined by the rise of Packed Cell Volume (PCV) after transfusion. Veterinarians rely on formula to estimate the transfusion volume that can raise patient's PCV to the target. This paper attempted to use machine learning models to predict post-transfusion PCV in anemic dogs. Linear regression, XGBoost and Support Vector Regression algorithms were used in machine learning prediction models. Transfusion records from Kasetsart University Veterinary Teaching Hospital at Hua Hin were employed to assess model performance. The formula commonly used by veterinarians was performance comparison baseline. Wilcoxon signed-rank test was used to assess significant differences of the result. It was statistically confirmed with confidence interval of 90% that Support Vector Regression performed better than the baseline method on conventional input set alone and when certain red blood cell attributes were added to the conventional input set.
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