Sharp Charles, Soleimani Vahid, Hannuna Sion, Camplani Massimo, Damen Dima, Viner Jason, Mirmehdi Majid, Dodd James W
Academic Respiratory Unit, University of Bristol Bristol, UK.
Faculty of Engineering, University of Bristol Bristol, UK.
Front Physiol. 2017 Feb 7;8:65. doi: 10.3389/fphys.2017.00065. eCollection 2017.
There is increasing interest in technologies that may enable remote monitoring of respiratory disease. Traditional methods for assessing respiratory function such as spirometry can be expensive and require specialist training to perform and interpret. Remote, non-contact tracking of chest wall movement has been explored in the past using structured light, accelerometers and impedance pneumography, but these have often been costly and clinical utility remains to be defined. We present data from a 3-Dimensional time-of-flight camera (found in gaming consoles) used to estimate chest volume during routine spirometry maneuvres. Patients were recruited from a general respiratory physiology laboratory. Spirometry was performed according to international standards using an unmodified spirometer. A Microsoft Kinect V2 time-of-flight depth sensor was used to reconstruct 3-dimensional models of the subject's thorax to estimate volume-time and flow-time curves following the introduction of a scaling factor to transform measurements to volume estimates. The Bland-Altman method was used to assess agreement of model estimation with simultaneous recordings from the spirometer. Patient characteristics were used to assess predictors of error using regression analysis and to further explore the scaling factors. The chest volume change estimated by the Kinect camera during spirometry tracked respiratory rate accurately and estimated forced vital capacity (FVC) and vital capacity to within ± <1%. Forced expiratory volume estimation did not demonstrate acceptable limits of agreement, with 61.9% of readings showing >150 ml difference. Linear regression including age, gender, height, weight, and pack years of smoking explained 37.0% of the variance in the scaling factor for volume estimation. This technique had a positive predictive value of 0.833 to detect obstructive spirometry. These data illustrate the potential of 3D time-of-flight cameras to remotely monitor respiratory rate. This is not a replacement for conventional spirometry and needs further refinement. Further algorithms are being developed to allow its independence from spirometry. Benefits include simplicity of set-up, no specialist training, and cost. This technique warrants further refinement and validation in larger cohorts.
人们对能够实现呼吸系统疾病远程监测的技术越来越感兴趣。传统的评估呼吸功能的方法,如肺活量测定法,可能成本高昂,并且需要专业培训才能进行操作和解读。过去曾利用结构光、加速度计和阻抗式肺量计探索过对胸壁运动进行远程、非接触式追踪,但这些方法往往成本高昂,其临床效用仍有待确定。我们展示了来自一款用于在常规肺活量测定操作期间估计胸腔容积的三维飞行时间相机(用于游戏机)的数据。患者是从一个普通呼吸生理学实验室招募的。使用未经修改的肺活量计按照国际标准进行肺活量测定。引入一个比例因子将测量值转换为容积估计值后,使用微软Kinect V2飞行时间深度传感器重建受试者胸部的三维模型,以估计容积-时间和流量-时间曲线。采用布兰德-奥特曼方法评估模型估计值与肺活量计同步记录值之间的一致性。利用回归分析通过患者特征评估误差预测因素,并进一步探索比例因子。在肺活量测定期间,Kinect相机估计的胸腔容积变化准确地跟踪了呼吸频率,并且估计的用力肺活量(FVC)和肺活量在±<1%以内。用力呼气量估计未显示出可接受的一致性界限,61.9%的读数显示差异>150毫升。纳入年龄、性别、身高、体重和吸烟包年数的线性回归解释了容积估计比例因子中37.0%的方差。该技术检测阻塞性肺活量测定的阳性预测值为0.833。这些数据说明了三维飞行时间相机远程监测呼吸频率的潜力。这并非传统肺活量测定法的替代品,需要进一步完善。正在开发进一步的算法,以使该方法能够独立于肺活量测定法。其优点包括设置简单、无需专业培训和成本低。该技术值得在更大的队列中进一步完善和验证。