Effects of Nature-Based Multisensory Stimulation on Pain Mechanisms in Women with Fibromyalgia Syndrome: A Randomized Double-Blind Placebo-Controlled Trial.

Pain Manag Nurs

Department of Physiotherapy, Faculty of Health Sciences, University of Granada, Granada, Spain; Instituto de Investigación Biosanitaria ibs.GRANADA, Granada, Spain. Electronic address:

Published: February 2024

AI Article Synopsis

  • The study investigates how nature-based sensory stimuli can alleviate pain in women with fibromyalgia syndrome.
  • The trial involved 42 participants who engaged with either real natural elements or synthetic versions, measuring pain levels and thresholds before and after the activity.
  • Results showed significant reductions in clinical pain and improvements in pain thresholds for the group interacting with natural stimuli, suggesting that exposure to nature can provide notable analgesic effects.

Article Abstract

Background: The term "nature-based sensory stimuli" refers to the sensory information produced by biotic and abiotic agents from natural environments. The literature has reported the beneficial effects of these agents on various pain dimensions in non-clinical populations.

Aims: To evaluate the potential analgesic effects of nature-based multisensory stimulation in women with fibromyalgia syndrome.

Methods: A randomized, double-blind, placebo-controlled, parallel-group trial with a 1:1 allocation ratio was conducted. Forty-two women with fibromyalgia syndrome interacted with either different plant species with flowers, stones, and soil organic matter or their synthetic imitations for 30 minutes. Outcome measurements were performed before and after the intervention, including clinical pain intensity using the Numeric Rating Scale, cold pain thresholds using the Cold Pressor Test, mechanical hyperalgesia and wind-up using a monofilament, and pressure pain thresholds using a pressure algometer.

Results: Analyses revealed group × time interactions for clinical pain intensity (F = 7.915, p = .008), cold-water immersion time (F = 7.271, p = .010), mechanical hyperalgesia (F = 4.701, p = .036), and pressure pain threshold (p ≤ .017). Between-group differences were found in clinical pain intensity (p = .012), cold pain thresholds (p = .002), and pressure pain thresholds (p < .05). The experimental group exhibited reduced clinical pain intensity (p = .001) and increased pressure pain thresholds (p ≤ .034).

Conclusions: Women with fibromyalgia syndrome may benefit from multisensory stimulation using biotic and abiotic agents from natural environments for 30 minutes. Interacting with flowering plants and soil components appears to induce analgesic effects.

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Source
http://dx.doi.org/10.1016/j.pmn.2023.06.014DOI Listing

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