The effect of equipment on the functional state and performance of servicemen with different body composition

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BACKGROUND: The development of an individual approach to planning the mass of equipment for each individual serviceman, taking into account the indicators of the component composition of the body and the preferences of servicemen, can in the future increase the level of effectiveness of combat operations by the Armed Forces of the Russian Federation.

AIM: Determine the effect of the mass of equipment on the functional state and performance of military personnel, depending on the indicators of the component composition of the body.

MATERIALS AND METHODS: The study was conducted on 140 volunteers, practically healthy male cadets of the Military Medical Academy aged 21 to 25 years. After bioimpedancemetry, all subjects were divided into two groups depending on the values of their fat mass. Next, the influence of equipment on the functional state of the body of cadets was determined using a step test.

RESULTS: The presence of a predominantly moderate positive correlation between the absolute, relative values of fat mass, BMI values and indicators of total power during the tests performed under the conditions of the work performed at loads of 0.5 (R-criterion values were 0.574–0.693) and 1 W/kg (R-criterion values were 0.624–0.681) without equipment. A similar correlation was found between the absolute, relative values of fat mass and indicators of total power during the test with a load of 1 W/kg (R-criterion values were 0.534–0.547) in equipment.

CONCLUSION: The obtained results suggest that the increase in weight load caused by equipment in individuals with a fat mass of more than 11 kg, both at rest and under conditions of moderate physical activity with a power of 1 W/kg, to a greater extent causes stress on functional systems, expressed in changes in most cardiorespiratory and metabolic parameters, compared with individuals with a lower fat mass.

作者简介

Yury Emelyanov

Military Medical Academy

Email: Emelayunov82@gmail.com
ORCID iD: 0000-0003-4803-3517
SPIN 代码: 6874-5924

M.D., Ph.D. (Medicine) Researcher, Research Center

俄罗斯联邦, Saint Petersburg

Dmitry Ovchinnikov

Military Medical Academy

Email: dv.ovchinnikov-vma@yandex.ru
ORCID iD: 0000-0001-8408-5301
SPIN 代码: 5437-3457
Scopus 作者 ID: 36185599800
Researcher ID: AGK-7796-2022

M.D., Ph.D. (Medicine), Associate Professor, the Head of the Organization of Scientific Work and Training of Scientific and Pedagogical Personnel Department

俄罗斯联邦, Saint Petersburg

Mikhail Ryzhikov

Military Medical Academy

Email: rijikos@mail.ru
SPIN 代码: 8280-8276

M.D., Ph.D. (Medicine), the Head of the Laboratory of the Research Center

俄罗斯联邦, Saint Petersburg

Yakov Baranov

Military Medical Academy

Email: Baranov13@mail.ru
SPIN 代码: 4503-4350

cadet

俄罗斯联邦, Saint Petersburg

Vladislav Zhizhin

Military Medical Academy

Email: Zhizhin@mail.ru

cadet

俄罗斯联邦, Saint Petersburg

Alexey Semenov

Military Medical Academy; Saint Petersburg State University

编辑信件的主要联系方式.
Email: semfeodosia82@mail.ru
ORCID iD: 0000-0002-1977-7536
SPIN 代码: 1147-3072
Researcher ID: IAP-1241-2023

M.D., Ph.D. (Medicine), doctoral student

俄罗斯联邦, Saint Petersburg; Saint Petersburg

参考

  1. Alekseev AV, Shangutov AO, Ilyushina VV. A new approach to solving issues of improving special clothing for military personnel. Marine collection. 2017;(9(2046)):76–80. (In Russ.)
  2. Geregey AM, Kovalev AS, Vetryakov OV, et al. Modern methods of the functional state assessing of the body and the physical performance of a serviceman in solving scientific research problems of biomedical direction. Bulletin of the Russian Military Medical Academy. 2018;20(2):202–208. (In Russ.) doi: 10.17816/brmma12330
  3. Pihlainen K, Santtila M, Häkkinen K, Kyröläinen H. Associations of Physical Fitness and Body Composition Characteristics With Simulated Military Task Performance. J Strength Cond Res. 2018;32(4): 1089–1098. (In Russ.) doi: 10.1519/JSC.0000000000001921
  4. Semenov AA, Gaivoronsky IV, Krishtop VV. Dynamics of changes in the component composition of the body of boys and girls during the first year of training at a military medical university. Orenburg Medical Bulletin. 2023;11(1):53–57. (In Russ.)
  5. Nikolaev DV, Shchelykalina SP. Lectures on bioimpedance analysis of human body composition. Moscow: RIO TsNIIOIZ MZ RF Publishing House; 2016. 152 p. (In Russ.)
  6. Gur’eva AB, Alekseeva VA, Petrova PG. Sexual characteristics of body composition and bioimpedance parameters in students of the Medical Institute of NEFU. Fundamental Research. 2015;(1–5): 929–932. (In Russ.)
  7. Bogdanova NA, Semenov AA. Assessment of the physical development of students according to the component composition and functional indicators of the body. Fizicheskaya kul’tura i sport v sisteme obrazovaniya: innovatsii i perspektivy razvitiya. All-Russian Scientific and Practical Conference, Saint Petersburg, 24–25 November, 2022. Saint Petersburg: Mediapapir Publ.; 2022. P. 236–243. (In Russ.)
  8. Demkin AD, Ovchinnikov DV, Yusupov VV, et al. Psychological characteristics of medical personnel and cadets (students) in an unfavorable epidemiological situation. Russian Military Medical Academy Reports. 2020;39(2):55–60. (In Russ.)
  9. Semenov AA, Gaivoronsky IV, Krishtop VV. Cluster analysis as an integrator of different methods for assessing the physical development of practically healthy adolescents. Astrakhan Medical Journal. 2023;18(1):72–80. (In Russ.) doi: 10.29039/1992-6499-2023-1-72-80

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2. Figure. Relative changes in the main cardiorespiratory and metabolic parameters in volunteers with different values of fat mass, depending on the additional mass load

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