Bastholm Sara Kjær, Brunner Iris Charlotte, Lundquist Camilla Biering
Hammel Neurorehabilitation and Research Centre, Hammel, Denmark.
Department of Clinical Medicine, Aarhus University, Denmark and Hammel Neurorehabilitation and Research Centre, Hammel, Denmark.
Physiother Res Int. 2025 Apr;30(2):e70056. doi: 10.1002/pri.70056.
A frequent sequela of stroke is upper limb (UL) impairment. Accurate UL function prognosis is crucial for targeted rehabilitation.
To determine the accuracy of physiotherapists' predictions of UL function and investigate whether prediction accuracy is affected by physiotherapists' seniority within rehabilitation and/or their level of education. Physiotherapist predictions were compared with a prediction algorithm.
Data from 81 patients were included. Two weeks post-stroke, physiotherapists predicted UL function based on clinical reasoning. ARAT scores (poor, limited, good, or excellent) at 3 months post-stroke served to determine prediction accuracy. Prediction accuracy was calculated as correct classification rate (CCR). Logistic regression was used to explore the effect of seniority and education. McNemar's test was applied to compare physiotherapist predictions to an algorithm applied 2 weeks post-stroke to the same patients.
The overall correct classification rate (CCR) of physiotherapist predictions was 41% (95% CI: 30-51). Predictions were most accurate for the excellent (75%) and poor (71%) categories, but lower for limited (22%) and good (30%). No association was observed between prediction accuracy and physiotherapist seniority or education. There was a tendency, but not a statistically significant superiority, in the prediction accuracy of the algorithm compared to the physiotherapist predictions (Odds ratio 2 [95% CI: 0.96-4.39], McNemar p = 0.0455, exact McNemar p = 0.0652).
Project number: 628213.
中风的常见后遗症是上肢功能受损。准确的上肢功能预后对于有针对性的康复至关重要。
确定物理治疗师对上肢功能预测的准确性,并调查预测准确性是否受物理治疗师在康复领域的资历和/或其教育水平的影响。将物理治疗师的预测与一种预测算法进行比较。
纳入81例患者的数据。中风后两周,物理治疗师根据临床推理预测上肢功能。中风后3个月的ARAT评分(差、受限、良好或优秀)用于确定预测准确性。预测准确性以正确分类率(CCR)计算。使用逻辑回归探索资历和教育的影响。应用McNemar检验将物理治疗师的预测与中风后2周应用于同一患者的算法进行比较。
物理治疗师预测的总体正确分类率(CCR)为41%(95%可信区间:30 - 51)。对优秀(75%)和差(71%)类别预测最准确,但对受限(22%)和良好(30%)类别预测较低。未观察到预测准确性与物理治疗师资历或教育之间的关联。与物理治疗师的预测相比,算法的预测准确性有一定趋势,但无统计学上的显著优势(优势比2 [95%可信区间:0.96 - 4.39],McNemar p = 0.0455,确切McNemar p = 0.0652)。
项目编号:628213。