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Characterizing individual painDETECT symptoms by average pain severity

Characterizing individual painDETECT symptoms by average pain severity Characterizing individual painDETECT symptoms by average pain severity
Characterizing individual painDETECT symptoms by average pain severity Characterizing individual painDETECT symptoms by average pain severity

PainDETECT is a screening measure for neuropathic pain.

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Key take away

A lesion or disease of the peripheral or central somatosensory nervous systems leads to neuropathic pain (NeP). As per this study, the examination of individual sensory items furnishes information complementary to total painDETECT scores and may be a more clinically relevant assessment for longitudinal monitoring of NeP.

Background

PainDETECT is a screening measure for neuropathic pain. The nine-item version consists of seven sensory items (burning, tingling/prickling, light touching, sudden pain attacks/electric shock-type pain, cold/heat, numbness, and slight pressure), a pain course pattern item, and a pain radiation item. The seven-item version consists only of the sensory items. Total scores of both versions discriminate average pain-severity levels (mild, moderate, and severe), but their ability to discriminate individual item severity has not been evaluated.

Method

Data were from a cross-sectional, observational study of six neuropathic pain conditions (N=624). Average pain severity was evaluated using the Brief Pain Inventory-Short Form, with severity levels defined using established cut points for distinguishing mild, moderate, and severe pain. The Wilcoxon rank sum test was followed by ridit analysis to represent the probability that a randomly selected subject from one average pain-severity level had a more favorable outcome on the specific painDETECT item relative to a randomly selected subject from a comparator severity level.

Result

A probability >50% for a better outcome (less severe pain) was significantly observed for each pain symptom item. The lowest probability was 56.3% (on numbness for mild vs moderate pain) and highest probability was 76.4% (on cold/heat for mild vs severe pain). The pain radiation item was significant (P<0.05) and consistent with pain symptoms, as well as with total scores for both painDETECT versions; only the pain course item did not differ.

Conclusion

PainDETECT differentiates severity such that the ability to discriminate average pain also distinguishes individual pain item severity in an interpretable manner. Pain-severity levels can serve as proxies to determine treatment effects, thus indicating probabilities for more favorable outcomes on pain symptoms.

Source:

ClinicoEconomics and Outcomes Research

Article:

Characterizing individual painDETECT symptoms by average pain severity

Authors:

Sadosky A et al.

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