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A Closer Look at Domain Shift for Deep Learning in Histopathology
Linköpings universitet, Institutionen för teknik och naturvetenskap, Medie- och Informationsteknik. Linköpings universitet, Tekniska fakulteten.ORCID-id: 0000-0003-1066-3070
Linköpings universitet, Institutionen för teknik och naturvetenskap, Medie- och Informationsteknik. Linköpings universitet, Tekniska fakulteten.ORCID-id: 0000-0002-9217-9997
Linköpings universitet, Institutionen för teknik och naturvetenskap, Medie- och Informationsteknik. Linköpings universitet, Tekniska fakulteten.ORCID-id: 0000-0002-7765-1747
Linköpings universitet, Institutionen för teknik och naturvetenskap, Medie- och Informationsteknik. Linköpings universitet, Tekniska fakulteten. Linköpings universitet, Centrum för medicinsk bildvetenskap och visualisering, CMIV.ORCID-id: 0000-0002-9368-0177
2019 (Engelska)Konferensbidrag, Poster (med eller utan abstract) (Refereegranskat)
Abstract [en]

Domain shift is a significant problem in histopathology. There can be large differences in data characteristics of whole-slide images between medical centers and scanners, making generalization of deep learning to unseen data difficult. To gain a better understanding of the problem, we present a study on convolutional neural networks trained for tumor classification of H&E stained whole-slide images. We analyze how augmentation and normalization strategies affect performance and learned representations, and what features a trained model respond to. Most centrally, we present a novel measure for evaluating the distance between domains in the context of the learned representation of a particular model. This measure can reveal how sensitive a model is to domain variations, and can be used to detect new data that a model will have problems generalizing to. The results show how learning is heavily influenced by the preparation of training data, and that the latent representation used to do classification is sensitive to changes in data distribution, especially when training without augmentation or normalization.

Ort, förlag, år, upplaga, sidor
2019.
Serie
arXiv.org
Nyckelord [en]
deep learning, histopathology, domain shift
Nationell ämneskategori
Medicinsk bildvetenskap
Identifikatorer
URN: urn:nbn:se:liu:diva-169071OAI: oai:DiVA.org:liu-169071DiVA, id: diva2:1464829
Konferens
COMPAY19: 2nd MICCAI workshop on Computational Pathology, Shenzhen, China, October 13 2019
Forskningsfinansiär
Wallenberg AI, Autonomous Systems and Software Program (WASP)Tillgänglig från: 2020-09-08 Skapad: 2020-09-08 Senast uppdaterad: 2025-02-09Bibliografiskt granskad
Ingår i avhandling
1. Deep Learning for Digital Pathology in Limited Data Scenarios
Öppna denna publikation i ny flik eller fönster >>Deep Learning for Digital Pathology in Limited Data Scenarios
2022 (Engelska)Doktorsavhandling, sammanläggning (Övrigt vetenskapligt)
Abstract [en]

The impressive technical advances seen for machine learning algorithms in combination with the digitalization of medical images in the radiology and pathology departments show great promise in introducing powerful image analysis tools for image diagnostics. In particular, deep learning, a subfield within machine learning, has shown great success, advancing fields such as image classification and detection. However, these types of algorithms are only used to a very small extent in clinical practice. 

One reason is that the unique nature of radiology and pathology images and the clinical setting in which they are acquired poses challenges not seen in other image domains. Differences relate to capturing methods, as well as the image contents. In addition, these datasets are not only unique on a per-image basis but as a collective dataset. Characteristics such as size, class balance, and availability of annotated labels make creating robust and generalizable deep learning methods a challenge. 

This thesis investigates how deep learning models can be trained for applications in this domain, with particular focus on histopathology data. We investigate how domain shift between different scanners causes performance drop, and present ways of mitigating this. We also present a method to detect when domain shift occurs between different datasets. Another hurdle is the shortage of labeled data for medical applications, and this thesis looks at two different approaches to solving this problem. The first approach investigates how labeled data from one organ and cancer type can boost cancer classification in another organ where labeled data is scarce. The second approach looks at a specific type of unsupervised learning method, self-supervised learning, where the model is trained on unlabeled data. For both of these approaches, we present strategies to handle low-data regimes that may greatly increase the availability to build deep learning models for a wider range of applications. 

Furthermore, deep learning technology enables us to go beyond traditional medical domains, and combine the data from both radiology and pathology. This thesis presents a method for improved cancer characterization on contrast-enhanced CT by incorporating corresponding pathology data during training. The method shows the potential of im-proving future healthcare by intergraded diagnostics made possible by machine-learning technology. 

Ort, förlag, år, upplaga, sidor
Linköping: Linköping University Electronic Press, 2022. s. 60
Serie
Linköping Studies in Science and Technology. Dissertations, ISSN 0345-7524 ; 2253
Nyckelord
Medical imaging, Digital pathology, Radiology, Machine learning, Deep learning.
Nationell ämneskategori
Cancer och onkologi
Identifikatorer
urn:nbn:se:liu:diva-189009 (URN)10.3384/9789179294748 (DOI)9789179294731 (ISBN)9789179294748 (ISBN)
Disputation
2022-11-14, Kåkenhus, K3, Campus Norrköping, Norrköping, 09:15 (Engelska)
Opponent
Handledare
Tillgänglig från: 2022-10-07 Skapad: 2022-10-07 Senast uppdaterad: 2023-04-03Bibliografiskt granskad

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https://arxiv.org/abs/1909.11575

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Stacke, KarinEilertsen, GabrielUnger, JonasLundström, Claes

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