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Use of Artificial Intelligence for Barrier Integrity Detection in Porcine Small Intestinal Epithelial Cells : 인공지능에 의한 돼지 소장상피세포의 장벽기능 식별

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dc.contributor.advisorCheol-Heui Yun-
dc.contributor.authorPayam Hosseinzadeh Kasani-
dc.date.accessioned2020-05-07T04:09:24Z-
dc.date.available2020-05-07T04:09:24Z-
dc.date.issued2020-
dc.identifier.other000000159005-
dc.identifier.urihttp://dcollection.snu.ac.kr/common/orgView/000000159005ko_KR
dc.description학위논문(석사)--서울대학교 대학원 :농업생명과학대학 농생명공학부,2020. 2. Cheol-Heui Yun.-
dc.description.abstractGiven the importance of monitoring intestinal permeability and the significant healthcare cost associated with the gut barrier disruption, automatic detection of barrier disruption pattern in porcine intestinal epithelial cells (IPEC-J2) using automatically computer-aided detection models based on a deep convolutional neural network for early detection and interpretation in measuring intestinal permeability is an area of active research and adequate experimental models are required to further understand the grade of localization and disruption of IPEC-J2 tight junction proteins.
In the present study, a deep learning-based ensemble model to build a classifier to automatically analyze and extract features from input images in order to accurately assess the grade of localization and disruption of tight junction proteins (TJ) in IPEC-J2 have been proposed. Different data augmentation techniques including horizontal and vertical flips, rotating, zooming, contrast adjustment and brightness enhancement with different parameters are employed to increase the dataset size and tackle the over-fitting problem. At first, the experiments began with evaluating the performance of 8 state-of-the-art deep CNN architectures namely, VGG-Net, InceptionV3, MobileNet, DenseNet, Xception, NAS-Net, InceptionResNetV2 and ResNet models on IPEC-J2 cell image classification. Transfer learning is a common strategy in training deep CNN models. Using this strategy, the weights that are already learned on a cross-domain dataset to initialize weights of deep CNN models can be transferred in this research. The final results showed that the deep CNN ensemble of InceptionV3 and DenseNet201 achieved the best result with an accurate detection rate of 99.22% than the individual InceptionV3 architecture (95.03%) and the individual DenseNet201 architecture (91.11%). The second-best ensemble architecture was the ensemble of InceptionV3 and MobileNet with an accuracy of 97.78% than the individual InceptionV3 architecture (95.03%) and the individual MobileNet architecture (95.82%.)
Collectively, employing CNN models could be considered as an automatic visual inspection system for the recognition, grading of expression, localization and disruption of tight junction proteins in epithelial cells with less misdiagnosis (false positive or false negative) and error rate, and also reduce the heavy workload of manual diagnosis.
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dc.description.tableofcontentsΙ. Review of Literature 1
1. Convolutional neural network 1
1.1 Characterization and design of generalized convolutional neural network 1
1.1.1 Convolution layer 1
1.1.2 Rectified linear unit function 2
1.1.3 Pooling layer 3
1.1.4 Fully connected layer 3
1.2 Feature extraction using transfer learning 5
1.2.1 InceptionV3: 5
1.2.2 Xception: 5
1.2.3 MobileNet: 6
1.2.4 NAS-Net: 6
1.2.5 ResNet50: 6
1.2.6 DenseNet: 7
1.2.7 VGG-Net: 7
1.2.8 InceptionResNetV2: 7
2. Intestinal barrier and pathways of permeability 8
3. Tight junction proteins 11
3.1 Characterization of intestinal tight junction proteins 11
3.2 Zonula occluden family 11
3.3 Occludin family 12
3.4 Claudin family 12
4. Experimental evaluation of intestinal barrier function 13
4.1 Limitation for the evaluation of intestinal permeability 13
4.2 Future direction for the evaluation of the intestinal permeability 17
5. The beneficial effect of deep convolutional neural network 18

П. Introduction 19

Ш. Materials and methods 21
1. Methodology 21
2. Motivation and Contribution 22
2.1 The contribution of the proposed ensemble model 22
2.2 Two-path ensemble architecture for IPEC-J2 cell image classification 23

ΙV. Experiment 26
1. Dataset description 26
2. Data pre-processing 34
2.1 Resizing: 34
2.2 Z-score image normalization: 34
2.3 Image normalization: 34
3. Data augmentation 34
4. Metrics for performance evaluation 36
5. Experimental Setup 36

V. Results 37
1. Deep features extraction based on transfer learning 37
2. Deep feature extraction based on deep learning-based ensemble models 39

VΙ. Discussion 43

VΠ. Literature cited 45
VШ. Acknowledgement 58
ΙХ. Appendix 60
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dc.language.isoeng-
dc.publisher서울대학교 대학원-
dc.subject.ddc630-
dc.titleUse of Artificial Intelligence for Barrier Integrity Detection in Porcine Small Intestinal Epithelial Cells-
dc.title.alternative인공지능에 의한 돼지 소장상피세포의 장벽기능 식별-
dc.typeThesis-
dc.typeDissertation-
dc.contributor.AlternativeAuthor카사니-
dc.contributor.department농업생명과학대학 농생명공학부-
dc.description.degreeMaster-
dc.date.awarded2020-02-
dc.identifier.uciI804:11032-000000159005-
dc.identifier.holdings000000000042▲000000000044▲000000159005▲-
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