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SpineCloud: Image Analytics for Predictive Modeling of Spine Surgery Outcomes

机译:SpineCloud:用于脊柱手术结果预测模型的图像分析

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Spinal degeneration and deformity present an enormous healthcare burden, with spine surgery among the main treatment modalities. Unfortunately, spine surgery (e.g., lumbar fusion) exhibits broad variability in the quality of outcome, with ~20-40% of patients gaining no benefit in pain or function ("failed back surgery") and earning criticism that is difficult to reconcile versus rapid growth in frequency and cost over the last decade. Vital to advancing the quality of care in spine surgery are improved clinical decision support (CDS) tools that are accurate, explainable, and actionable: accurate in prediction of outcomes; explainable in terms of the physical / physiological factors underlying the prediction; and actionable within the shared decision process between a surgeon and patient in identifying steps that could improve outcome. This technical note presents an overview of a novel outcome prediction framework for spine surgery (dubbed SpineCloud) that leverages innovative image analytics in combination with explainable prediction models to achieve accurate outcome prediction. Key to the SpineCloud framework are image analysis methods for extraction of high-level quantitative features from multi-modality peri-operative images (CT, MR, and radiography) related to spinal morphology (including bone and soft-tissue features), the surgical construct (including deviation from an ideal reference), and longitudinal change in such features. The inclusion of such image-based features is hypothesized to boost the predictive power of models that conventionally rely on demographic / clinical data alone (e.g., age, gender, BMI, etc.). Preliminary results using gradient boosted decision trees demonstrate that such prediction models are explainable (i.e., why a particular prediction is made), actionable (identifying features that may be addressed by the surgeon and/or patient), and boost predictive accuracy compared to analysis based on demographics alone (e.g., AUC improved by ~25% in preliminary studies). Incorporation of such CDS tools in spine surgery could fundamentally alter and improve the shared decision-making process between surgeons and patients by highlighting actionable features to improve selection of therapeutic and rehabilitative pathways.
机译:脊柱变性和畸形带来了巨大的医疗负担,脊柱外科手术是主要的治疗方式。不幸的是,脊柱手术(例如,腰椎融合术)在预后质量方面表现出很大的差异,约20-40%的患者在疼痛或功能方面均无益处(“失败的背部手术”),并且受到批评,难以与之相提并论。在过去十年中,频率和成本快速增长。改进,准确,可解释和可行的临床决策支持(CDS)工具对于提高脊柱手术的护理质量至关重要。就预测所依据的物理/生理因素而言,是可以解释的;并在外科医生和患者之间的共同决策过程中采取行动,以确定可以改善结果的步骤。本技术说明概述了脊柱外科手术的新颖结局预测框架(称为SpineCloud),该框架利用创新的图像分析技术与可解释的预测模型相结合来实现准确的结局预测。 SpineCloud框架的关键是从与脊柱形态(包括骨骼和软组织特征)有关的多模态围手术期图像(CT,MR和放射线照相)中提取高级定量特征的图像分析方法(包括与理想参考的偏差)以及此类特征的纵向变化。假设包括这样的基于图像的特征可以增强传统上仅依赖人口统计/临床数据(例如年龄,性别,BMI等)的模型的预测能力。与基于分析的结果相比,使用梯度增强决策树的初步结果表明,这种预测模型是可解释的(即为什么要进行特定的预测),可操作的(标识外科医生和/或患者可能解决的特征)以及增强的预测准确性。仅就人口统计数据而言(例如,在初步研究中,AUC改善了约25%)。通过突出可操作的功能来改善治疗和康复路径的选择,将这种CDS工具纳入脊柱外科手术可以从根本上改变和改善外科医生与患者之间共同的决策过程。

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