» Articles » PMID: 35500023

A Multistudy Analysis Reveals That Evoked Pain Intensity Representation is Distributed Across Brain Systems

Overview
Journal PLoS Biol
Specialty Biology
Date 2022 May 2
PMID 35500023
Authors
Affiliations
Soon will be listed here.
Abstract

Information is coded in the brain at multiple anatomical scales: locally, distributed across regions and networks, and globally. For pain, the scale of representation has not been formally tested, and quantitative comparisons of pain representations across regions and networks are lacking. In this multistudy analysis of 376 participants across 11 studies, we compared multivariate predictive models to investigate the spatial scale and location of evoked heat pain intensity representation. We compared models based on (a) a single most pain-predictive region or resting-state network; (b) pain-associated cortical-subcortical systems developed from prior literature ("multisystem models"); and (c) a model spanning the full brain. We estimated model accuracy using leave-one-study-out cross-validation (CV; 7 studies) and subsequently validated in 4 independent holdout studies. All spatial scales conveyed information about pain intensity, but distributed, multisystem models predicted pain 20% more accurately than any individual region or network and were more generalizable to multimodal pain (thermal, visceral, and mechanical) and specific to pain. Full brain models showed no predictive advantage over multisystem models. These findings show that multiple cortical and subcortical systems are needed to decode pain intensity, especially heat pain, and that representation of pain experience may not be circumscribed by any elementary region or canonical network. Finally, the learner generalization methods we employ provide a blueprint for evaluating the spatial scale of information in other domains.

Citing Articles

Decoding pain: uncovering the factors that affect the performance of neuroimaging-based pain models.

Lee D, Lee S, Woo C Pain. 2024; 166(2):360-375.

PMID: 39324942 PMC: 11726494. DOI: 10.1097/j.pain.0000000000003392.


Neuromarkers in addiction: definitions, development strategies, and recent advances.

Harp N, Wager T, Kober H J Neural Transm (Vienna). 2024; 131(5):509-523.

PMID: 38630190 DOI: 10.1007/s00702-024-02766-2.


Towards a Real-Life Understanding of the Altered Functional Behaviour of the Default Mode and Salience Network in Chronic Pain: Are People with Chronic Pain Overthinking the Meaning of Their Pain?.

Johansson E, Xiong H, Polli A, Coppieters I, Nijs J J Clin Med. 2024; 13(6).

PMID: 38541870 PMC: 10971341. DOI: 10.3390/jcm13061645.


Fractal Similarity of Pain Brain Networks.

Fauchon C, Bastuji H, Peyron R, Garcia-Larrea L Adv Neurobiol. 2024; 36:639-657.

PMID: 38468056 DOI: 10.1007/978-3-031-47606-8_32.


Chemogenetic Modulation of Posterior Insula CaMKIIa Neurons Alters Pain and Thermoregulation.

Kadakia F, Khadka A, Yazell J, Davidson S J Pain. 2023; 25(3):766-780.

PMID: 37832899 PMC: 10922377. DOI: 10.1016/j.jpain.2023.10.005.


References
1.
Bernard J, Bester H, Besson J . Involvement of the spino-parabrachio -amygdaloid and -hypothalamic pathways in the autonomic and affective emotional aspects of pain. Prog Brain Res. 1996; 107:243-55. DOI: 10.1016/s0079-6123(08)61868-3. View

2.
Greenspan J, Lee R, Lenz F . Pain sensitivity alterations as a function of lesion location in the parasylvian cortex. Pain. 1999; 81(3):273-282. DOI: 10.1016/S0304-3959(99)00021-4. View

3.
Seeley W, Menon V, Schatzberg A, Keller J, Glover G, Kenna H . Dissociable intrinsic connectivity networks for salience processing and executive control. J Neurosci. 2007; 27(9):2349-56. PMC: 2680293. DOI: 10.1523/JNEUROSCI.5587-06.2007. View

4.
Mesulam M . Large-scale neurocognitive networks and distributed processing for attention, language, and memory. Ann Neurol. 1990; 28(5):597-613. DOI: 10.1002/ana.410280502. View

5.
Geuter S, Boll S, Eippert F, Buchel C . Functional dissociation of stimulus intensity encoding and predictive coding of pain in the insula. Elife. 2017; 6. PMC: 5470871. DOI: 10.7554/eLife.24770. View