TY - JOUR
T1 - A machine-learning–powered spectral-dominant multimodal soft wearable system for long-term and early-stage diagnosis of plant stresses
AU - Jiang, Qin
AU - Zhao, Xin
AU - Zhao, Tiyong
AU - Li, Wenlong
AU - Ye, Jie
AU - Dong, Xingxing
AU - Wang, Xinyi
AU - Liu, Qingyu
AU - Ding, Han
AU - Ye, Zhibiao
AU - Chen, Xiaodong
AU - Wu, Zhigang
N1 - Publisher Copyright:
Copyright © 2025 The Authors, some rights reserved.
PY - 2025/6/27
Y1 - 2025/6/27
N2 - Addressing the global malnutrition crisis requires precise and timely diagnostics of plant stresses to enhance the quality and yield of nutrient-rich crops, such as tomatoes. Soft wearable sensors offer a promising approach by continuously monitoring plant physiology. However, challenges remain in identifying direct physiological indicators of plant stresses, hindering the development of accurate diagnostic models for predicting symptom progression. Here, we introduce a machine-learning-powered spectral-dominant multimodal soft wearable system (MapS-Wear) for precise, long-term, and early-stage diagnosis of stresses in tomatoes. MapS-Wear continuously tracks leaf surrounding temperature, humidity, and unique in-situ transmission spectra, which are critical stress-related indicators. The machine learning framework processes these multimodal data to predict gradual stress progression and diagnose nutrient deficiencies in plants over 10 days earlier than conventional computer vision methods. Moreover, MapS-Wears enables portable and large-scale screening of grafted tomato varieties in greenhouses, accelerating the identification of compatible grafting combinations. This demonstration highlights the potential for high-throughput plant phenotyping and yield improvement.
AB - Addressing the global malnutrition crisis requires precise and timely diagnostics of plant stresses to enhance the quality and yield of nutrient-rich crops, such as tomatoes. Soft wearable sensors offer a promising approach by continuously monitoring plant physiology. However, challenges remain in identifying direct physiological indicators of plant stresses, hindering the development of accurate diagnostic models for predicting symptom progression. Here, we introduce a machine-learning-powered spectral-dominant multimodal soft wearable system (MapS-Wear) for precise, long-term, and early-stage diagnosis of stresses in tomatoes. MapS-Wear continuously tracks leaf surrounding temperature, humidity, and unique in-situ transmission spectra, which are critical stress-related indicators. The machine learning framework processes these multimodal data to predict gradual stress progression and diagnose nutrient deficiencies in plants over 10 days earlier than conventional computer vision methods. Moreover, MapS-Wears enables portable and large-scale screening of grafted tomato varieties in greenhouses, accelerating the identification of compatible grafting combinations. This demonstration highlights the potential for high-throughput plant phenotyping and yield improvement.
UR - http://www.scopus.com/inward/record.url?scp=105010085255&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=105010085255&partnerID=8YFLogxK
M3 - Article
C2 - 40577461
AN - SCOPUS:105010085255
SN - 2375-2548
VL - 11
JO - Science advances
JF - Science advances
IS - 26
M1 - eadw7279
ER -