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首页> 外文期刊>Frontiers in Public Health >Causal Discovery in Radiographic Markers of Knee Osteoarthritis and Prediction for Knee Osteoarthritis Severity With Attention–Long Short-Term Memory
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Causal Discovery in Radiographic Markers of Knee Osteoarthritis and Prediction for Knee Osteoarthritis Severity With Attention–Long Short-Term Memory

机译:膝关节骨关节炎射线显微标志性的因果发现及对膝关节骨关节炎的预测与关注长期记忆

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The goal of this study is to build a prognostic model to predict the severity of radiographic knee osteoarthritis (KOA) and to identify long-term disease progression risk factors for early intervention and treatment. We designed a long short-term memory (LSTM) model with an attention mechanism to predict Kellgren/Lawrence (KL) grade for knee osteoarthritis patients. The attention scores reveal a time-associated impact of different variables on KL grades. We also employed a Fast-Causal Inference (FCI) algorithm to estimate the causal relation of key variables, which will aid in clinical interpretability. Based on the clinical information of current visits, we accurately predicted the KL grade of the patient’s next visits with 90% accuracy. We found that joint space narrowing was a major contributor to KOA progression. Furthermore, our causal structure model indicated that knee alignments may lead to joint space narrowing, while symptoms (swelling, grinding, catching, and limited mobility) have little impact on KOA progression. This study evaluated a broad spectrum of potential risk factors from clinical data, questionnaires, and radiographic markers that are rarely considered in previous studies. Using our statistical model, providers are able to predict the risk of the future progression of KOA, which will provide a basis for selecting proper interventions, such as proceeding to joint arthroplasty for patients. Our causal model suggests that knee alignment should be considered in the primary treatment and the KOA progression was independent of clinical symptoms.
机译:本研究的目标是建立预后模型,以预测射线照相膝关节骨关节炎(KOA)的严重程度,并确定早期干预和治疗的长期疾病进展危险因素。我们设计了一个长期的短期内存(LSTM)模型,注意机制,以预测膝关节骨关节炎患者的Kellgren / Lawrence(KL)等级。注意分数显示了不同变量对KL成绩的时间相关的影响。我们还采用了一种快速因果推断(FCI)算法来估计关键变量的因果关系,这将有助于临床解释性。根据当前访问的临床信息,我们准确地预测了患者的下次访问的KL等级,精度为90%。我们发现联合空间缩小是KOA进展的主要贡献者。此外,我们的因果结构模型表明,膝关节对齐可能导致联合空间变窄,而症状(肿胀,研磨,捕获和有限的流动性)对KOA进展影响不大。本研究评估了广泛的临床资料,问卷和射线照相标记的潜在危险因素,这些危险因素很少在以前的研究中考虑。使用我们的统计模型,提供商能够预测KOA未来进展的风险,这将为选择适当的干预措施提供基础,例如进行患者联合关节置换术。我们的因果模型表明,在主要治疗中应考虑膝关节对齐,KOA进展与临床症状无关。

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