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Cristina Tassorelli

Researcher at University of Pavia

Publications -  406
Citations -  19055

Cristina Tassorelli is an academic researcher from University of Pavia. The author has contributed to research in topics: Migraine & Medicine. The author has an hindex of 50, co-authored 346 publications receiving 15732 citations. Previous affiliations of Cristina Tassorelli include University of Rochester Medical Center & UniFi.

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Peripheral vagal nerve stimulation modulates the nociceptive withdrawal reflex in healthy subjects: A randomized, cross-over, sham-controlled study.

TL;DR: These findings are consistent with a modulation of central descending pathways for pain control in primary headache, so an altered spinal and supraspinal control of pain may partially explain the therapeutic effect of non-invasive vagal nerve stimulation.
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Modulation of RAGE isoforms expression in the brain and plasma of rats exposed to transient focal cerebral ischemia

TL;DR: It is demonstrated that regional brain expression of RAGE is differentially affected by tMCAo in rat, and modifications are accompanied by a decrease in the plasma levels of soluble RAGE, thereby suggesting a potential role for soluble Rage as a peripheral biomarker of focal ischemia.
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Pain in Women: A Perspective Review on a Relevant Clinical Issue that Deserves Prioritization.

TL;DR: In this paper, an Expert Group Opinion Paper on pain in women aims to review the treatment of pain conditions mainly affecting women, as well as the fundamental aspects of the different clinical response to drug treatment between the genders, and what can be done for gender-specific rehabilitation.
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Machine Learning Approach to Support the Detection of Parkinson’s Disease in IMU-Based Gait Analysis

TL;DR: The conceptual model of approaching ML that is proposed could reduce the risk of overrepresenting multicollinear gait features in the model, reducing therisk of overfitting in the test performances while fostering the explainability of the results.