TY - JOUR
T1 - 机器学习在即时诊断中的应用进展
AU - Cao, Chaoyu
AU - Tian, Miao
AU - Xu, Xiayu
AU - Zhao, Bei
AU - You, Minli
AU - Xu, Feng
N1 - Publisher Copyright:
© 2021 The authors. All right reserved.
PY - 2021
Y1 - 2021
N2 - In recent years, point-of-care testing (POCT) has attracted more and more attention because it is cheap, fast and easy-to-operate. However, detection accuracy and reliability remain challenging for POCT. Machine learning methods are powerful for data processing and analysis, which is the potential to improve the accuracy and reliability of POCT greatly. Additionally, it is also possible to bring breakthroughs in remote medicine and data sharing fields for POCT. In this review, we describe the basic principles of machine learning algorithms and explain their advantages in POCT; then introduce the applications of machine learning in POCT, including paper-based assays, microfluidic lab-on-chip technologies, and wearable devices; after that, we also put forward suggestions on the selection of machine learning algorithms based on the data type and detection targets of POCT tasks; finally, we propose several directions of the future development of machine learning algorithms in POCT.
AB - In recent years, point-of-care testing (POCT) has attracted more and more attention because it is cheap, fast and easy-to-operate. However, detection accuracy and reliability remain challenging for POCT. Machine learning methods are powerful for data processing and analysis, which is the potential to improve the accuracy and reliability of POCT greatly. Additionally, it is also possible to bring breakthroughs in remote medicine and data sharing fields for POCT. In this review, we describe the basic principles of machine learning algorithms and explain their advantages in POCT; then introduce the applications of machine learning in POCT, including paper-based assays, microfluidic lab-on-chip technologies, and wearable devices; after that, we also put forward suggestions on the selection of machine learning algorithms based on the data type and detection targets of POCT tasks; finally, we propose several directions of the future development of machine learning algorithms in POCT.
KW - Machine learning
KW - Microfluidic
KW - Paper-based point-of-care testing
KW - Point-of-care testing
KW - Wearable devices
UR - https://www.scopus.com/pages/publications/85122062136
U2 - 10.1360/SSC-2021-0048
DO - 10.1360/SSC-2021-0048
M3 - 文章
AN - SCOPUS:85122062136
SN - 1674-7224
VL - 51
SP - 1590
EP - 1614
JO - Scientia Sinica Chimica
JF - Scientia Sinica Chimica
IS - 12
ER -