| Literature DB >> 29910632 |
Kreshnik Hoti1,2, Mustafa Atee1, Jeffery D Hughes1.
Abstract
PURPOSE: Accurate pain assessment is critical to detect pain and facilitate effective pain management in dementia patients. The electronic Pain Assessment Tool (ePAT) is a point-of-care solution that uses automated facial analysis in conjunction with other clinical indicators to evaluate the presence and intensity of pain in patients with dementia. This study aimed to examine clini-metric properties (clinical utility and predictive validity) of the ePAT in this population group.Entities:
Keywords: PainChek™; automated facial analysis; clinical utility; dementia; ePAT; pain assessment; predictive validity
Year: 2018 PMID: 29910632 PMCID: PMC5989701 DOI: 10.2147/JPR.S158793
Source DB: PubMed Journal: J Pain Res ISSN: 1178-7090 Impact factor: 3.133
No pain vs pain using the electronic Pain Assessment Tool
| Pain score | Category | Rest | Move | Total |
|---|---|---|---|---|
| 0–6 | No pain | 73 | 24 | 97 |
| ≥7 | Pain | 131 | 172 | 303 |
| Total | 204 | 196 | 400 |
No pain vs pain using the Abbey Pain Scale
| Pain score | Category | Rest | Move | Total |
|---|---|---|---|---|
| 0–2 | No pain | 69 | 24 | 93 |
| ≥3 | Pain | 135 | 172 | 307 |
| Total | 204 | 196 | 400 |
Contingency (2×2) table for accuracy statistics
| Pain score results | APS score
| Total | |||
|---|---|---|---|---|---|
| Pain
| |||||
| Present (APS ≥3) | Absent (APS ≤2) | ||||
|
| |||||
| 307 | 93 | 400 | |||
| 295 (TP) | 8 (FP) | 303 | |||
| 12 (FN) | 85 (TN) | 97 | |||
Abbreviations: ePAT, electronic Pain Assessment Tool; APS, Abbey Pain Scale; TP, true positive; FP, false positive; FN, false negative; TN, true negative.
Calculations of sensitivity, specificity, accuracy, likelihood ratios, and predictive values before prevalence adjustment
| Clinimetric parameter | Formula | Value | 95% CI |
|---|---|---|---|
| 96.1% | 93.9%–98.3% | ||
| 91.4% | 85.7%–97.1% | ||
| 11.2 | 5.8–21.7 | ||
| 0.04 | 0.02–0.07 | ||
| 97.4% | 95.6%–99.2% | ||
| 87.6% | 81.1%–94.2% | ||
| 76.8% | 72.3%–80.8% | ||
| 95.0% | 92.9%–97.1% |
Note: All values approximated to closest decimal point.
Abbreviations: TP, true positive; FP, false positive; FN, false negative; TN, true negative.
ROC curve characteristics, optimal criterion, and calculated sensitivity and specificity after prevalence adjustment
| Variable under investigation | ePAT |
| Classification variable (pain) | APS |
| Number of pain assessments (paired) | 400 |
| Positive group | 307 (76.8%) |
| Negative group | 93 (23.2%) |
| Pain prevalence (%) | 50 |
| Area under the ROC curve (AUC) | 0.98 |
| Standard Error | 0.00572 |
| 95% Confidence interval | 0.96–0.99 |
| z statistic | 83.9 |
| Significance level P (Area=0.5) | <0.0001 |
| Youden index J | 0.88 |
| 95% Confidence interval | 0.82–0.92 |
| Associated criterion | >7 |
| 95% Confidence interval | >6 to >8 |
| Sensitivity | 91.2 |
| Specificity | 96.8 |
| Optimal criterion | >6 |
| 95% Confidence interval | >6 to >7 |
| Sensitivity | 96.1 |
| Specificity | 91.4 |
Notes:
Taking into account disease prevalence (50%) and estimated costs: cost False Positive: 1; cost False Negative: 1 cost True Positive: 0; cost True Negative: 0 Positive group= pain present, Negative group= pain absent;
BCa bootstrap confidence interval (1000 iterations; random number seed: 978).
Abbreviations: ePAT, electronic Pain Assessment Tool; ROC, receiver-operating characteristic; BCa, bias corrected and accelerated.
Figure 1Electronic Pain Assessment Tool (ePAT) receiver-operating characteristic curve.
Note: Data shown in the graph were based on pain prevalence of 50% (ie, after adjustment).