Saranchai Sinlapasorn, Benjawan Rodjanadid, J. Tanthanuch, Bura Sindhupakorn, Arjuna Chaiyasena
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引用次数: 0
摘要
本研究对影响因素进行了研究,并建立了一个模型来预测全膝关节置换术后患者的术后 WOMAC 评分。首先,通过特征工程找到影响因素,使用了多种技术,如广义线性模型、支持向量机、深度学习和梯度提升树。然后,利用梯度提升树技术创建模型,将特征工程中的不同属性进行分组。对模型进行比较,以找出预测性最好的模型。这项工作使用了 RapidMiner Studio 软件 9.9 版本。结果表明,梯度提升树技术创建的模型最有效,该模型的均方根误差(RMSE)、平均绝对偏差(MAD)和平方误差(SE)均为 \mathbf{5}。\mathbf{311}\pm\mathbf{0}.\mathbf{538}, \mathbf{3}.\mathbf{550}\pm\mathbf{0}.\mathbf{376}, and \mathbf{28}.\mathbf{472}\pm\mathbf{5}.\mathbf{811} respectively.
MODELING TO PREDICT THE PATIENTS’ POSTOPERATIVE WOMAC SCORE BY FEATURES ENGINEERING AND GRADIENT BOOST TREE
This research studies factors and creates a model to predict the patients’ postoperative WOMAC score after total knee replacement. First, the influencing factors were found by feature engineering, using several techniques such as Generalized Linear Models, Support Vector Machines, Deep Learning, and Gradient Boost Trees. Afterwards, the model was created by the Gradient Boost Tree technique which groups different attributes from feature engineering. Models were compared to find the model with the best predictability. RapidMiner Studio software version 9.9 was used in this work. The results demonstrate that the model created by the Gradient Boost Tree technique with attributes originating from feature engineering on the Gradient Boost Tree performs most efficiently with root mean square error (RMSE), mean absolute deviation (MAD) and square error (SE) of \mathbf{5}.\mathbf{311}\pm\mathbf{0}.\mathbf{538}, \mathbf{3}.\mathbf{550}\pm\mathbf{0}.\mathbf{376}, and \mathbf{28}.\mathbf{472}\pm\mathbf{5}.\mathbf{811} respectively.