Mechanical signals protect stem cell lineage selection, preserving the bone and muscle phenotypes in obesity

Danielle M. Frechette, Divya Krishnamoorthy, Tee Pamon, M. Ete Chan, Vihitaben Patel, Clinton T. Rubin

Research output: Contribution to journalReview articlepeer-review

11 Scopus citations

Abstract

The incidence of obesity is rapidly rising, increasingmorbidity and mortality ratesworldwide. Associated comorbidities include type 2 diabetes, heart disease, fatty liver disease, and cancer. The impact of excess fat on musculoskeletal health is still unclear, although it is associated with increased fracture risk and a decline in muscular function. The complexity of obesity makes understanding the etiology of bone and muscle abnormalities difficult. Exercise is an effective and commonly prescribed nonpharmacological treatment option, but it can be difficult or unsafe for the frail, elderly, and morbidly obese. Exercise alternatives, such as low-intensity vibration (LIV), have potential for improving musculoskeletal health, particularly in conditions with excess fat. LIV has been shown to influence bone marrow mesenchymal stem cell differentiation toward higher-order tissues (i.e., bone) and away from fat. While the exact mechanisms are not fully understood, recent studies utilizing LIV both at the bench and in the clinic have demonstrated some efficacy. Here, we discuss the current literature investigating the effects of obesity on bone, muscle, and bone marrow and how exercise and LIV can be used as effective treatments for combating the negative effects in the presence of excess fat.

Original languageEnglish
Pages (from-to)33-50
Number of pages18
JournalAnnals of the New York Academy of Sciences
Volume1409
Issue number1
DOIs
StatePublished - 1 Dec 2017
Externally publishedYes

Keywords

  • Diabetes
  • Exercise
  • Musculoskeletal
  • Osteoporosis
  • Vibration

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