Prediction of early postoperative pain using sleep quality and heart rate variability

Author:

Ho Chun‐Ning1234ORCID,Fu Pei‐Han2,Hung Kuo‐Chuan123ORCID,Wang Li‐Kai23,Lin Yao‐Tsung23,Yang Albert C.56,Ho Chung‐Han7,Chang Jia‐Hui7,Chen Jen‐Yin12

Affiliation:

1. School of Medicine, College of Medicine National Sun Yat‐sen University Kaohsiung Taiwan

2. Department of Anesthesiology Chi Mei Medical Center Tainan Taiwan

3. Department of Hospital and Health Care Administration, College of Recreation and Health Management Chia Nan University of Pharmacy and Science Tainan Taiwan

4. Southern Taiwan University of Science and Technology Tainan Taiwan

5. Institute of Brain Science/Digital Medicine Center National Yang Ming Chial Tung University Taipei Taiwan

6. Department of Medical Research Taipei Veterans General Hospital Taipei Taiwan

7. Department of Medicine Research Chi Mei Medical Center Tainan Taiwan

Abstract

AbstractPurposeAccurate predictions of postoperative pain intensity are necessary for customizing analgesia plans. Insomnia is a risk factor for severe postoperative pain. Moreover, heart rate variability (HRV) can provide information on the sympathetic–parasympathetic balance in response to noxious stimuli. We developed a prediction model that uses the insomnia severity index (ISI), HRV, and other demographic factors to predict the odds of higher postoperative pain.MethodsWe recruited gynecological surgery patients classified as American Society of Anesthesiologists class 1–3. An ISI questionnaire was completed 1 day before surgery. HRV was calculated offline using intraoperative electrocardiogram data. Pain severity at the postanesthesia care unit (PACU) was assessed with the 0–10 numerical rating scale (NRS). The primary outcome was the model's predictive ability for moderate‐to‐severe postoperative pain. The secondary outcome was the relationship between individual risk factors and opioid consumption in the PACU.ResultsOur study enrolled 169 women. Higher ISI scores (p = 0.001), higher parasympathetic activity (rMSSD, pNN50, HF; p < 0.001, p < 0.001, p < 0.001), loss of fractal dynamics (SD2, alpha 1; p = 0.012, p = 0.039) in HRV analysis before the end of surgery were associated with higher NRS scores, while laparoscopic surgery (p = 0.031) was associated with lower NRS scores. We constructed a multiple logistic model (area under the curve = 0.852) to predict higher NRS scores at PACU arrival. The five selected predictors were age (OR: 0.94; p = 0.020), ISI score (OR: 1.14; p = 0.002), surgery type (laparoscopic or open; OR: 0.12; p < 0.001), total power (OR: 2.02; p < 0.001), and alpha 1 (OR: 0.03; p < 0.001).ConclusionWe employed a multiple logistic regression model to determine the likelihood of moderate‐to‐severe postoperative pain upon arrival at the PACU. Physicians could personalize analgesic regimens based on a deeper comprehension of the factors that contribute to postoperative pain.

Funder

Chi Mei Medical Center

Publisher

Wiley

Subject

Anesthesiology and Pain Medicine

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