Informatique, Bio-Informatique et Systèmes Complexes (IBISC) EA 4526, Univ Evry, Université Paris-Saclay, 91020 Evry, France.
Department of Computer Science, Sukkur IBA University, Sukkur 65200, Sindh, Pakistan.
Sensors (Basel). 2022 Nov 3;22(21):8452. doi: 10.3390/s22218452.
We propose a framework for optimizing personalized treatment outcomes for patients with neurological diseases. A typical consequence of such diseases is gait disorders, partially explained by command and muscle tone problems associated with spasticity. Intramuscular injection of botulinum toxin type A is a common treatment for spasticity. According to the patient's profile, offering the optimal treatment combined with the highest possible benefit-risk ratio is important. For the prediction of knee and ankle kinematics after botulinum toxin type A (BTX-A) treatment, we propose: (1) a regression strategy based on a multi-task architecture composed of LSTM models; (2) to introduce medical treatment data (MTD) for context modeling; and (3) a gating mechanism to model treatment interaction more efficiently. The proposed models were compared with and without metadata describing treatments and with serial models. Multi-task learning (MTL) achieved the lowest root-mean-squared error (RMSE) (5.60°) for traumatic brain injury (TBI) patients on knee trajectories and the lowest RMSE (3.77°) for cerebral palsy (CP) patients on ankle trajectories, with only a difference of 5.60° between actual and predicted. Overall, the best RMSE ranged from 5.24° to 6.24° for the MTL models. To the best of our knowledge, this is the first time that MTL has been used for post-treatment gait trajectory prediction. The MTL models outperformed the serial models, particularly when introducing treatment metadata. The gating mechanism is efficient in modeling treatment interaction and improving trajectory prediction.
我们提出了一个针对神经疾病患者的个性化治疗优化框架。此类疾病的一个典型后果是步态障碍,部分原因是与痉挛相关的运动指令和肌肉张力问题。A型肉毒毒素的肌肉内注射是痉挛的常见治疗方法。根据患者的个人资料,提供最佳治疗并结合尽可能高的获益风险比非常重要。为了预测 A 型肉毒毒素 (BTX-A) 治疗后的膝关节和踝关节运动学,我们提出了以下建议:(1) 基于由 LSTM 模型组成的多任务架构的回归策略;(2) 引入医疗治疗数据 (MTD) 进行上下文建模;(3) 采用门控机制更有效地建模治疗相互作用。将所提出的模型与没有描述治疗的元数据的模型以及序列模型进行了比较。对于创伤性脑损伤 (TBI) 患者的膝关节轨迹,多任务学习 (MTL) 实现了最低的均方根误差 (RMSE)(5.60°),对于脑瘫 (CP) 患者的踝关节轨迹,实现了最低的 RMSE(3.77°),实际值和预测值之间仅相差 5.60°。总体而言,MTL 模型的最佳 RMSE 范围为 5.24°至 6.24°。据我们所知,这是首次将 MTL 用于治疗后步态轨迹预测。MTL 模型优于序列模型,尤其是在引入治疗元数据时。门控机制在建模治疗相互作用和提高轨迹预测方面非常有效。