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Francesco Rubino

Researcher at King's College London

Publications -  133
Citations -  12607

Francesco Rubino is an academic researcher from King's College London. The author has contributed to research in topics: Type 2 diabetes & Diabetes mellitus. The author has an hindex of 41, co-authored 131 publications receiving 10277 citations. Previous affiliations of Francesco Rubino include Sapienza University of Rome & HealthPartners.

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Refractory hyperglycemia after gastric bypass surgery: a novel subtype of type 2 diabetes?

TL;DR: Patients failing to respond to radically effective therapies can provide clues to identify distinct disease subtypes, and Studying absolute nonresponders to RYGB may reveal disease sub types with distinct pathophysiology.
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Duodenal-jejunal bypass improves nonalcoholic fatty liver disease independently of weight loss in rodents with diet-induced obesity

TL;DR: Findings suggest that DJB can reverse, independently of weight loss, ectopic fat deposition and insulin-resistance, two features of NAFLD that share a mutual pathway, in which Perilipin-2 seems to be the main player, supporting further investigation into strategies that target the gut to treat metabolic liver diseases.
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Identifying specific surgical tools and methods for laparoscopic colorectal operations in obese patients.

TL;DR: The instruments routinely used during surgery on patients with normal body mass index (BMI) should often be modified and substituted according to the patient’s BMI, and it is believed such an approach will prove beneficial to surgeons performing laparoscopic operations on obese patients.

Joint international consensus statement for ending stigma of obesity

Francesco Rubino, +40 more
TL;DR: A multidisciplinary group of international experts reviewed available evidence on the causes and harms of weight stigma and, using a modified Delphi process, developed a joint consensus statement with recommendations to eliminate weight bias.