| Literature DB >> 26872677 |
James M Harte1,2, Christopher K Golby3, Johanna Acosta1, Edward F Nash4, Ercihan Kiraci5, Mark A Williams5, Theodoros N Arvanitis1, Babu Naidu4,6.
Abstract
Respiratory disease is the leading cause of death in the UK. Methods for assessing pulmonary function and chest wall movement are essential for accurate diagnosis, as well as monitoring response to treatment, operative procedures and rehabilitation. Despite this, there is a lack of low-cost devices for rapid assessment. Spirometry is used to measure air flow expired, but cannot infer or directly measure full chest wall motion. This paper presents the development of a low-cost chest wall motion assessment system. The prototype was developed using four Microsoft Kinect sensors to create a 3D time-varying representation of a patient's torso. An evaluation of the system in two phases is also presented. Initially, static volume of a resuscitation mannequin with that of a Nikon laser scanner is performed. This showed the system has slight underprediction of 0.441 %. Next, a dynamic analysis through the comparison of results from the prototype and a spirometer in nine cystic fibrosis patients and thirteen healthy subjects was performed. This showed an agreement with correlation coefficients above 0.8656 in all participants. The system shows promise as a method for assessing respiratory disease in a cost-effective and timely manner. Further work must now be performed to develop the prototype and provide further evaluations.Entities:
Keywords: Chest wall; Medical device design; Respiratory system diagnostic technique; Thoracic surgery; Thoracic wall
Mesh:
Year: 2016 PMID: 26872677 PMCID: PMC5069336 DOI: 10.1007/s11517-015-1433-1
Source DB: PubMed Journal: Med Biol Eng Comput ISSN: 0140-0118 Impact factor: 2.602
Fig. 1System overview
Fig. 2Scan taken by the Kinect-based system
Fig. 3Change in volume as captured by the Kinect-based system
Fig. 4Probability density function and cumulative density function for mannequin data
Demographic of participants in system evaluation (healthy volunteers and CF patients)
| CF volunteers, | Healthy volunteers, | |
|---|---|---|
| Age (years), mean (SD) | 32.8 (9.9) | 30.0 (8.1) |
| Sex (male/female) | 6/3 | 7/6 |
| Weight (kg), mean (SD) | 67.3 (15.1) | 66.6 (15.7) |
| Height (cm), mean (SD) | 168.9 (10.8) | 167.5 (9.9) |
| BMI (kg/m2), mean (SD) | 23.4 (3.3) | 23.6 (4.5) |
Fig. 5Example dynamic lung volume time series from both Kinect- and spirometry-based estimates
Fig. 6Direct individual time series comparison
Fig. 7Correlation coefficients between the Kinect-based system and spirometry
Fig. 8Summary histograms showing fitted intercept and slope estimates from the TLS regression