%0 Journal Article %T MXene-Based Skin-Like Hydrogel Sensor and Machine Learning-Assisted Handwriting Recognition. %A Wang F %A Song D %A Zhou C %A Li X %A Huang Y %A Xu W %A Liu G %A Zhou S %J ACS Appl Mater Interfaces %V 16 %N 31 %D 2024 Aug 7 %M 39046871 %F 10.383 %R 10.1021/acsami.4c10043 %X Conductive hydrogels are widely used in flexible sensors owing to their adjustable structure, good conductivity, and flexibility. The performance of excellent mechanical properties, high sensitivity, and elastic modulus compatible with human tissues is of great interest in the field of flexible sensors. In this paper, the functional groups of trisodium citrate dihydrate (SC) and MXene form multiple hydrogen bonds in the polymer network to prepare a hydrogel with mechanical properties (Young's modulus (23.5-92 kPa) of similar human tissue (0-100 kPa)), sensitivity (stretched GF is 4.41 and compressed S1 is 5.15 MPa-1), and durability (1000 cycles). The hydrogel is able to sensitively detect deformations caused by strain and stress and can be used in flexible sensors to detect human movement in real time such as fingers, wrists, and walking. In addition, the combination of matrix sensing and machine learning was successfully used for handwriting recognition with an accuracy of 0.9744. The combination of machine learning and flexible sensors shows great potential in areas such as healthcare, information security, and smart homes.