Soft Wearable Thermal Devices Integrated with Machine Learning Academic Article uri icon

abstract

  • AbstractCore body temperature (CBT) is a vital parameter that provides insight into individuals' overall health. However, existing methods to monitor CBT are mainly invasive and limited to applications in operating rooms. This work reports a soft wearable thermal device with low power operation to accurately monitor the core temperature and overcome these limitations. The thermal device comprises multiple temperature sensors separated with insulating materials of different thermal conductivities. The design provides a welldefined thermal gradient to characterize the heat flux across the device. Thermal simulation of the devices with finite element analysis provides guidelines on the device design. Experimental studies involving tissue phantom and human subjects characterize and validate the device performance. A machine learning approach can account for heterogeneous, hardtomeasure parameters among individuals such as tissue thermal conductivity and heat generation rate. The machine learning algorithms can be trained to accurately quantify the core temperature in human subjects using the zeroheatflux device measured temperature as a reference. The results show that the mean core temperature difference between the zeroheatflux and the devices is 0.01C with 95% limits of agreement in the range of 0.08C and 0.1C.

published proceedings

  • ADVANCED MATERIALS TECHNOLOGIES

author list (cited authors)

  • Zavareh, A., Tran, B., Orred, C., Rhodes, S., Rahman, M. S., Namkoong, M., ... Tian, L.

complete list of authors

  • Zavareh, Amir||Tran, Brittany||Orred, Christian||Rhodes, Savannah||Rahman, Md Saifur||Namkoong, Myeong||Lee, Ricky||Carlisle, Cody||Rosas, Miguel||Pavlov, Anton||Chen, Ian||Schilling, Greg||Smith, Marc||Masood, Fahad||Hanks, John||Tian, Limei

publication date

  • August 2023

publisher