Kumar Saurav, Gujja Pranav Kashyap, Kongara Snehith, Tzen Yi-Ting, Wijesundara Muthu B J
University of Texas at Arlington Research Institute, Arlington, TX, USA.
University of Texas Southwestern Medical Center, Dallas, TX, USA.
Disabil Rehabil Assist Technol. 2025 Jun 21:1-15. doi: 10.1080/17483107.2025.2522784.
Pressure injuries (PI) pose a significant risk for individuals with spinal cord injuries. While clinical guidelines recommend periodic pressure redistribution (PR), adherence is often low due to limited real-time monitoring and feedback. In this paper, we present an Android application, integrated with a machine learning-based posture prediction algorithm to enhance real-time monitoring and feedback in a smart seat cushion (SSC) system for wheelchair users. Data from 12 healthy non-wheelchair participants in nine seating postures were collected. Five deep leaning architectures - Multi-Layer Perceptron (MLP), Convolutional Neural Network (CNN), Long Short-Term Memory (LSTM), CNN-LSTM, and Multi-Headed Attention models were trained, and their test performances were compared. An Android application was then developed with Flutter for on-device deployment. The highest performing model (LSTM) was then integrated using TensorFlow Lite to enable real-time posture prediction. We found that LSTM gives an accuracy of 92%, outperforming the other architectures. Also, the Android app was tested on a Google Pixel tablet, which can successfully control seat cushion operations wirelessly, identify user's seating postures, visualize live pressure maps, generate statistics of user's seating habits and weight shifting maneuvers, as well as provide guidance during pressure relief protocols to improve adherence. The proposed system provides a solution to low adherence to weight shift protocols observed in other studies by providing a live pressure map view and real-time feedback, thereby promoting consistent PR practice. This innovation represents a significant advancement in the prevention of PI and supports improved user compliance with clinical guidelines.
压疮(PI)对脊髓损伤患者构成重大风险。虽然临床指南建议定期进行压力再分布(PR),但由于实时监测和反馈有限,依从性往往较低。在本文中,我们展示了一款安卓应用程序,它集成了基于机器学习的姿势预测算法,以增强针对轮椅使用者的智能座垫(SSC)系统中的实时监测和反馈。收集了12名健康非轮椅使用者在九种坐姿下的数据。对五种深度学习架构——多层感知器(MLP)、卷积神经网络(CNN)、长短期记忆网络(LSTM)、CNN-LSTM和多头注意力模型进行了训练,并比较了它们的测试性能。然后使用Flutter开发了一个安卓应用程序以便在设备上部署。接着使用TensorFlow Lite集成性能最佳的模型(LSTM)以实现实时姿势预测。我们发现LSTM的准确率为92%,优于其他架构。此外,该安卓应用程序在谷歌Pixel平板电脑上进行了测试,它可以成功地无线控制座垫操作、识别用户的坐姿、可视化实时压力图、生成用户坐姿习惯和体重转移动作的统计数据,以及在减压方案期间提供指导以提高依从性。所提出的系统通过提供实时压力图视图和实时反馈,为其他研究中观察到的体重转移方案依从性低的问题提供了解决方案,从而促进一致的压力再分布实践。这项创新代表了在预防压疮方面的重大进步,并支持提高用户对临床指南的依从性。