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首页> 外文期刊>The spine journal: official journal of the North American Spine Society >Can a machine learning model accurately predict patient resource utilization following lumbar spinal fusion?
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Can a machine learning model accurately predict patient resource utilization following lumbar spinal fusion?

机译:机器学习模型可以准确地预测腰椎脊柱融合后的患者资源利用吗?

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BACKGROUND CONTEXT: With the increasing emphasis on value-based healthcare in Centers for Medicare and Medicaid Services reimbursement structures, bundled payment models have been adopted for many orthopedic procedures. Immense variability of patients across hospitals and providers makes these models potentially less viable in spine surgery. Machine-learning models have been shown reliable at predicting patient-specific outcomes following lumbar spine surgery and could, therefore, be applied to developing stratified bundled payment schemes.
机译:背景技术:随着Medicare和医疗补助报销结构中心的基于价值的医疗保健,已采用捆绑的支付模型为许多骨科程序采用。 医院和提供商患者的巨大可变性使这些模型可能在脊柱外科潜在不那么可行。 已经证明了机器学习模型在腰椎手术后预测患者特异性结果,因此可以应用于开发分层捆绑的付款方案。

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