TY - JOUR
T1 - DeepLearnMOR
T2 - A deep-learning framework for fluorescence image-based classification of organelle morphology
AU - Li, Jiying
AU - Peng, Jinghao
AU - Jiang, Xiaotong
AU - Rea, Anne C.
AU - Peng, Jiajie
AU - Hu, Jianping
N1 - Publisher Copyright:
© 2021 American Society of Plant Biologists. All rights reserved.
PY - 2021/8
Y1 - 2021/8
N2 - The proper biogenesis, morphogenesis, and dynamics of subcellular organelles are essential to their metabolic functions. Conventional techniques for identifying, classifying, and quantifying abnormalities in organelle morphology are largely manual and time-consuming, and require specific expertise. Deep learning has the potential to revolutionize image-based screens by greatly improving their scope, speed, and efficiency. Here, we used transfer learning and a convolutional neural network (CNN) to analyze over 47,000 confocal microscopy images from Arabidopsis wild-type and mutant plants with abnormal division of one of three essential energy organelles: Chloroplasts, mitochondria, or peroxisomes. We have built a deep-learning framework, DeepLearnMOR (Deep Learning of the Morphology of Organelles), which can rapidly classify image categories and identify abnormalities in organelle morphology with over 97% accuracy. Feature visualization analysis identified important features used by the CNN to predict morphological abnormalities, and visual clues helped to better understand the decision-making process, thereby validating the reliability and interpretability of the neural network. This framework establishes a foundation for future larger-scale research with broader scopes and greater data set diversity and heterogeneity.
AB - The proper biogenesis, morphogenesis, and dynamics of subcellular organelles are essential to their metabolic functions. Conventional techniques for identifying, classifying, and quantifying abnormalities in organelle morphology are largely manual and time-consuming, and require specific expertise. Deep learning has the potential to revolutionize image-based screens by greatly improving their scope, speed, and efficiency. Here, we used transfer learning and a convolutional neural network (CNN) to analyze over 47,000 confocal microscopy images from Arabidopsis wild-type and mutant plants with abnormal division of one of three essential energy organelles: Chloroplasts, mitochondria, or peroxisomes. We have built a deep-learning framework, DeepLearnMOR (Deep Learning of the Morphology of Organelles), which can rapidly classify image categories and identify abnormalities in organelle morphology with over 97% accuracy. Feature visualization analysis identified important features used by the CNN to predict morphological abnormalities, and visual clues helped to better understand the decision-making process, thereby validating the reliability and interpretability of the neural network. This framework establishes a foundation for future larger-scale research with broader scopes and greater data set diversity and heterogeneity.
UR - http://www.scopus.com/inward/record.url?scp=85112206631&partnerID=8YFLogxK
U2 - 10.1093/plphys/kiab223
DO - 10.1093/plphys/kiab223
M3 - 文章
C2 - 34618108
AN - SCOPUS:85112206631
SN - 0032-0889
VL - 186
SP - 1786
EP - 1799
JO - Plant Physiology
JF - Plant Physiology
IS - 4
ER -