Biomechanics in business administration: Leveraging biofeedback mechanisms to enhance user experience

  • Yu Zheng College of economics, Management and Development studies, Cavite State University, Manila 1706, Philippine
Keywords: biofeedback; physiological differences; environmental disturbances; skill learning; technological advancements
Article ID: 1373

Abstract

Although biofeedback has achieved remarkable results in many areas, it also has some limitations. For example, the measurement results of a biofeedback meter can be affected by a variety of factors, including physiological differences between individuals, environmental disturbances, etc. In addition, biofeedback training requires a certain amount of time and patience to learn and master the skills, which can be a challenge for some individuals who are impatient. In summary, biofeedback is an effective mental skill training method, which plays an important role in competitive sports and is gradually being borrowed and applied by other fields. As technology continues to evolve and improve, biofeedback is expected to play a greater role in more fields.

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Published
2025-02-18
How to Cite
Zheng, Y. (2025). Biomechanics in business administration: Leveraging biofeedback mechanisms to enhance user experience. Molecular & Cellular Biomechanics, 22(3), 1373. https://doi.org/10.62617/mcb1373
Section
Article