| Literature DB >> 35161955 |
Elitania Jiménez-García1, Miguel Ángel Murillo-Escobar1, Jesús Fontecha-Diezma2, Rosa Martha López-Gutiérrez1, Liliana Cardoza-Avendaño1.
Abstract
Childhood obesity causes not only medical and psychosocial problems, it also reduces the life expectancy of the adults that they will become. On a large scale, obese adults adversely affect labor markets and the gross domestic product of countries. Monitoring the growth charts of children helps to maintain their body weight within healthy parameters according to the World Health Organization. Modern technologies allow the use of telehealth to carry out weight control programs and monitoring to verify children's compliance with the daily recommendations for risk factors that can be promoters of obesity, such as insufficient physical activity and insufficient sleep hours. In this work, we propose a secure remote monitoring and supervision scheme of physical activity and sleep hours for the children based on telehealth, multi-user networks, chaotic encryption, and spread spectrum, which, to our knowledge, is the first attempt to consider this service for safe pediatric telemedicine. In experimental results, we adapted a recent encryption algorithm in the literature for the proposed monitoring scheme using the assessment of childhood obesity as an application case in a multi-user network to securely send and receive fictitious parameters on childhood obesity of five users through the Internet by using just one communication channel. The results show that all the monitored parameters can be transmitted securely, achieving high sensitivity against secret key, enough secret key space, high resistance against noise interference, and 4.99 Mb/sec in computational simulations. The proposed scheme can be used to monitor childhood obesity in secure telehealth application.Entities:
Keywords: chaos; multiuser network; obesity; spread spectrum; telehealth
Mesh:
Year: 2022 PMID: 35161955 PMCID: PMC8840740 DOI: 10.3390/s22031213
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Anthropometric Data.
Figure 2Kinds of data obtained by non-intrusive device: (a) Data of physical activity and (b) hours of sleep.
Recommended sleep duration hours.
| Age Group | Recommended Sleep (hours) |
|---|---|
| <5 | >11 |
| 5–10 | >10 |
| >10 | >9 |
Figure 3Architecture of the proposed transmission of medical information in a multi-user network.
Plain text fictional data of 5 users (children).
| User 1 | User 2 | User 3 | User 4 | User 5 | |
|---|---|---|---|---|---|
| Weekly steps (mean) | 12,891 | 10,616 | 12,221 | 10,829 | 14,504 |
| Weekly activity (mean min) | 160 | 134 | 154 | 144 | 184 |
| Weekly distance (km) | 47 | 30 | 38 | 31 | 44 |
| Calories burned (cal) | 1208 | 700 | 1039 | 745 | 1023 |
| Sleep (mean min) | 533 | 480 | 562 | 511 | 546 |
| Deep sleep (mean min) | 136 | 217 | 220 | 149 | 146 |
| Light sleep (mean min) | 396 | 262 | 342 | 181 | 400 |
| Fell asleep at | 675 | 326 | 630 | 657 | 651 |
| Woke up at | 488 | 447 | 472 | 465 | 481 |
| Awake time (mean min) | 0 | 0 | 0 | 16 | 2 |
Secret key definition for encryption process of the five users.
|
|
|
|
| |
|---|---|---|---|---|
| User 1 | 1.400112233445566 | 0.300112233445566 | 0.556677889900112 | 0.667788990011223 |
| User 2 | 1.400223344556677 | 0.300223344556677 | 0.667788990011223 | 0.778899001122334 |
| User 3 | 1.400334455667788 | 0.300223344556677 | 0.778899001122334 | 0.889900112233445 |
| User 4 | 1.400445566778899 | 0.300334455667788 | 0.889900112233445 | 0.990011223344556 |
| User 5 | 1.400556677889900 | 0.300445566778899 | 0.990011223344556 | 0.001122334455667 |
Figure 4Cryptogram: (a) complete cryptogram with noise, (b) first 1,000 data points of cryptogram, and (c) AWGN noise added.
Secret key definition for the decryption process of the five users.
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| |
|---|---|---|---|---|
| User 1 | 1.400112233445566 | 0.300112233445566 | 0.556677889900118 | 0.667788990011223 |
| User 2 | 1.400223344556677 | 0.300223344556677 | 0.667788990011223 | 0.778899001122334 |
| User 3 | 1.400334455667788 | 0.300223344556677 | 0.778899001122334 | 0.889900112233445 |
| User 4 | 1.400445566778899 | 0.300334455667788 | 0.889900112233445 | 0.990011223344557 |
| User 5 | 1.400556677889900 | 0.300445566778899 | 0.990011223344556 | 0.001122334455667 |
Recovered plain text of five users, where bold numbers denote incorrect data.
| User 1 | User 2 | User 3 | User 4 | User 5 | |
|---|---|---|---|---|---|
| Weekly steps (mean) |
| 10,616 | 12,221 |
| 14,504 |
| Weekly activity (mean min) |
| 134 | 154 |
| 184 |
| Distance week (km) |
| 30 | 38 |
| 44 |
| Calories burned (cal) |
| 700 | 1039 |
| 1023 |
| Sleep (mean min) |
| 480 | 562 |
| 546 |
| Deep sleep (mean min) |
| 217 | 220 |
| 146 |
| Light sleep (mean min) |
| 262 | 342 |
| 400 |
| Fell asleep at |
| 326 | 630 |
| 651 |
| Woke up at |
| 447 | 472 |
| 481 |
| Awake time (mean min) |
| 0 | 0 |
| 2 |
BER between plain text and decrypted text for noise robustness.
| SNR (dB) | 0.001 | 0.01 | 0.1 | 1 | 3 | 0 |
|---|---|---|---|---|---|---|
| User 1 | 45.05 | 53.12 | 47.91 | 48.95 | 48.95 | 48.69 |
| User 2 | 0.89 | 0.59 | 0. 59 | 0.59 | 0 | 0 |
| User 3 | 0.89 | 0.29 | 0.19 | 0.29 | 0.29 | 0 |
| User 4 | 50.52 | 48.17 | 50.00 | 51.56 | 49.47 | 50.78 |
| User 5 | 0.59 | 0.52 | 0.59 | 0.27 | 0.26 | 0 |