| Literature DB >> 32155976 |
Manish Hosanee1, Gabriel Chan1, Kaylie Welykholowa1, Rachel Cooper1, Panayiotis A Kyriacou2, Dingchang Zheng3, John Allen4, Derek Abbott5,6, Carlo Menon7, Nigel H Lovell8, Newton Howard9, Wee-Shian Chan1, Kenneth Lim1, Richard Fletcher10,11, Rabab Ward12, Mohamed Elgendi1,7,12,13.
Abstract
One in three adults worldwide has hypertension, which is associated with significant morbidity and mortality. Consequently, there is a global demand for continuous and non-invasive blood pressure (BP) measurements that are convenient, easy to use, and more accurate than the currently available methods for detecting hypertension. This could easily be achieved through the integration of single-site photoplethysmography (PPG) readings into wearable devices, although improved reliability and an understanding of BP estimation accuracy are essential. This review paper focuses on understanding the features of PPG associated with BP and examines the development of this technology over the 2010-2019 period in terms of validation, sample size, diversity of subjects, and datasets used. Challenges and opportunities to move single-site PPG forward are also discussed.Entities:
Keywords: PPG signal; biomedical engineering; biomedical signal analysis; blood pressure measurement; digital health; digital medicine; hypertension assessment; hypertension diagnosis; photoplethysmogram; photoplethysmography; pulse oximetry; wearable devices; wearable technology
Year: 2020 PMID: 32155976 PMCID: PMC7141397 DOI: 10.3390/jcm9030723
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.241
Figure 1Photoplethysmogram features and measurement sites of single-source photoplethysmography (PPG) in studies conducted between January 2010 and January 2019.
Figure 2Flow diagram of the exclusion criteria used in this study. From the initial search total (n = 5217), 5192 studies were excluded, and 25 studies were identified.
Summary of all identified publications testing single-measurement PPG to estimate BP.
| Location | Study | Participants |
Age | Gold Standard | Signal type (Number of Features) | Error (mmHg) | Correlation Co-Efficient |
|---|---|---|---|---|---|---|---|
| Finger | Raichle et al. (2018) [ | 32 (all F, pregnant) |
| ABP | PPG (N/R) | MBs = 5 ± 15 | Rs = 0.401 b |
| Hsu et al.(2018) [ | 94 (45:M, 49:F) |
| N/R | PPG (2) | N/R | Rs = 0.354 a | |
| Alex et al.(2018) [ | 7 (3:M, 4:F) |
| Volume clamp | PPG (2) | RMSES < 7 | N/R | |
| Zadi et al.(2018) [ | 15 (8:M, 7:F) |
| Volume clamp | PPG (2) | RMSES < 8 | N/R | |
| Lin et al.(2018) [ | 22 |
| Volume clamp | PPG (5) + VPG (8) + APG (6) | MBs = 4 ± 9 | N/R | |
| Chandrasekhar et al. (2018) [ | 35 |
| ABP | PPG (4) | MBs = 9 | Rs = 0.76 b | |
| Dey et al.(2018) [ | 205 (90:M, 115:F) |
| Manual | PPG/VPG/APG (233) + Demographics (3) | MAEs = 7 ± 9 | N/R | |
| Acciaroli et al. (2018) [ | 8 (7:M, 1:F) | 20–40 | Invasive | PPG (10) | RMSE = 7 ± 2 | N/R | |
| Shin et al. (2017) [ | 25 (9:M, 16:F) |
| ABP | APG (8) + VPG (4) | N/R | Rs = 0.83 a | |
| Chen et al. (2017) [ | 10 (5:M, 5:F) |
| Volume clamp | PPG (1) | MEs = −1 ± 4 | N/R | |
| Gao et al. (2016) [ | 65 (40:M, 25:F) |
| ABP | PPG (22) + Demographics (2) | MEs = 5 ± 4 | N/R | |
| Sun et al. (2016) [ | 19 (14:M, 5:F) |
| Volume clamp | PPG (10) + VPG (4) + APG (4) | RMSES = 9 | Rs = 0.85 b | |
| Suzuki et al. (2015) [ | 50 (20:M, 30:F) | 20–70 | ABP | VPG (2) + APG (3) | MAES = 8 | N/R | |
| Fu et al. (2014) [ | 1 (M) | 54 | ABP | PPG (1) | N/R | N/R | |
| Kondo et al. (2014) [ | 9 (5:M, 4:F) |
| Manual | PPG (5) + APG (25) | MEs = 6 | RS = 0.67 b | |
| Ruiz-Rodríguez et al. (2013) [ | 572(329:M, 243:F) |
| Invasive | PPG (N/R) | MBs = −3 ± 19 | N/R | |
| Fukushima et al. (2013) [ | 5 (2:M, 3:F) |
| Volume clamp | APG (6) | N/R | R = 0.71 b | |
| Monte-Moreno et al. (2011) [ | 410 (213:M, 197:F) | 9–80 | Manual | PPG (N/R) | N/R | RS = 0.954 b | |
| Chua et al. (2010) [ | 18 (14:M, 4:F) |
| Volume clamp | PPG (1) | N/R | RS = 0.73 a | |
| Wrist | Atomi et al. (2017) [ | 25 |
| Manual | PPG (1) + APG (15) + Demographics (4) | MES = 2 ± 9 | Rs = 0.80 b |
| Zahedi et al. (2015) [ | 1 (M) | 25 | ABP | PPG (1) | N/R | N/R | |
| Chua et al. (2010) [ | 18 (14:M, 4:F) |
| Volume clamp | PPG (1) | N/R | RS = 0.40 a | |
| Arm | Acciaroli et al. (2018) [ | 8 (7:M, 1:F) | 20–40 | Invasive | PPG (10) | RMSE = 7 ± 2 | N/R |
| Toe | Fu et al. (2014) [ | 1 (M) | 54 | ABP | PPG (1) | N/R | N/R |
| Forehead | Sun et al. (2016) [ | 19 (14:M, 5:F) |
| Volume clamp | PPG (10) + VPG (4) + APG (4) | RMSES = 9 | Rs = 0.85 b |
| N/R | Liang et al. (2018) [ | 121 | N/R | Invasive | PPG (N/R) | N/R | N/R |
| Duan et al. (2016) [ | 32 | N/R | N/R | PPG (15) | MAEs = 5 ± 8 | N/R | |
| Gaurav et al. (2016) [ | 3000 | N/R | Invasive | PPG (12) + APG (23) | MEs = 0.2 ± 7 | N/R | |
| Choudhury et al. (2014) [ | 32 | N/R | N/R | PPG (4) | MBs = 1 ± 13 | N/R |
Note that PPG stands for photoplethysmogram, VPG stands for velocity photoplethysmogram, APG stands for acceleration photoplethysmogram, ABP stands for automated blood pressure measurement, MEs stands for estimated mean error for systolic blood pressure, MED stands for estimated mean error for diastolic blood pressure, MAE stands for mean absolute error, MB stands for mean bias (calculated using Bland–Altman method), RMSE stands for root mean square error (systolic or diastolic, R a stands for correlation coefficient between PPG feature with measured BP, R b stands for correlation coefficient between estimated BP and measured BP, NN stands for artificial neural network and N/R stands for not reported.
Figure 3Overall trend of publications that utilized single-measurement PPG to estimate BP from January 2010 to January 2019.
Figure 4Pie chart of the hemodynamic status of participants in single-measurement PPG studies from January 2010 to January 2019.
Figure 5Top 5 countries contributing single-site measurement PPG studies between January 2010 and January 2019. We recommend collaboration between research groups in these countries to identify an optimal approach to BP measurement using single-measurement PPG.
Figure 6Pie chart of the percentage of studies published between January 2010 and January 2019 that used an automated BP (ABP) cuff, manual BP cuff, or invasive approach as a gold standard. Studies that did not disclose their gold standard method were classified as “not reported” (N/R). Usage of the ABP cuff as the gold standard could be used to assess the validity of PPG in estimating BP from an outpatient setting, while the use of intra-arterial catheters could be used to assess the validity of PPG in an inpatient hospitalized setting (e.g., in critical care units).