Comparison of Deep Learning Approaches for Multi-Label Chest X-Ray Classification

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Comparison of Deep Learning Approaches for Multi-Label Chest X-Ray Classification. / Baltruschat, Ivo M; Nickisch, Hannes; Grass, Michael; Knopp, Tobias; Saalbach, Axel.

In: SCI REP-UK, Vol. 9, No. 1, 23.04.2019, p. 6381.

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@article{2d0ff98c12714862a915514d33a22e71,
title = "Comparison of Deep Learning Approaches for Multi-Label Chest X-Ray Classification",
abstract = "The increased availability of labeled X-ray image archives (e.g. ChestX-ray14 dataset) has triggered a growing interest in deep learning techniques. To provide better insight into the different approaches, and their applications to chest X-ray classification, we investigate a powerful network architecture in detail: the ResNet-50. Building on prior work in this domain, we consider transfer learning with and without fine-tuning as well as the training of a dedicated X-ray network from scratch. To leverage the high spatial resolution of X-ray data, we also include an extended ResNet-50 architecture, and a network integrating non-image data (patient age, gender and acquisition type) in the classification process. In a concluding experiment, we also investigate multiple ResNet depths (i.e. ResNet-38 and ResNet-101). In a systematic evaluation, using 5-fold re-sampling and a multi-label loss function, we compare the performance of the different approaches for pathology classification by ROC statistics and analyze differences between the classifiers using rank correlation. Overall, we observe a considerable spread in the achieved performance and conclude that the X-ray-specific ResNet-38, integrating non-image data yields the best overall results. Furthermore, class activation maps are used to understand the classification process, and a detailed analysis of the impact of non-image features is provided.",
keywords = "Journal Article",
author = "Baltruschat, {Ivo M} and Hannes Nickisch and Michael Grass and Tobias Knopp and Axel Saalbach",
year = "2019",
month = apr,
day = "23",
doi = "10.1038/s41598-019-42294-8",
language = "English",
volume = "9",
pages = "6381",
journal = "SCI REP-UK",
issn = "2045-2322",
publisher = "NATURE PUBLISHING GROUP",
number = "1",

}

RIS

TY - JOUR

T1 - Comparison of Deep Learning Approaches for Multi-Label Chest X-Ray Classification

AU - Baltruschat, Ivo M

AU - Nickisch, Hannes

AU - Grass, Michael

AU - Knopp, Tobias

AU - Saalbach, Axel

PY - 2019/4/23

Y1 - 2019/4/23

N2 - The increased availability of labeled X-ray image archives (e.g. ChestX-ray14 dataset) has triggered a growing interest in deep learning techniques. To provide better insight into the different approaches, and their applications to chest X-ray classification, we investigate a powerful network architecture in detail: the ResNet-50. Building on prior work in this domain, we consider transfer learning with and without fine-tuning as well as the training of a dedicated X-ray network from scratch. To leverage the high spatial resolution of X-ray data, we also include an extended ResNet-50 architecture, and a network integrating non-image data (patient age, gender and acquisition type) in the classification process. In a concluding experiment, we also investigate multiple ResNet depths (i.e. ResNet-38 and ResNet-101). In a systematic evaluation, using 5-fold re-sampling and a multi-label loss function, we compare the performance of the different approaches for pathology classification by ROC statistics and analyze differences between the classifiers using rank correlation. Overall, we observe a considerable spread in the achieved performance and conclude that the X-ray-specific ResNet-38, integrating non-image data yields the best overall results. Furthermore, class activation maps are used to understand the classification process, and a detailed analysis of the impact of non-image features is provided.

AB - The increased availability of labeled X-ray image archives (e.g. ChestX-ray14 dataset) has triggered a growing interest in deep learning techniques. To provide better insight into the different approaches, and their applications to chest X-ray classification, we investigate a powerful network architecture in detail: the ResNet-50. Building on prior work in this domain, we consider transfer learning with and without fine-tuning as well as the training of a dedicated X-ray network from scratch. To leverage the high spatial resolution of X-ray data, we also include an extended ResNet-50 architecture, and a network integrating non-image data (patient age, gender and acquisition type) in the classification process. In a concluding experiment, we also investigate multiple ResNet depths (i.e. ResNet-38 and ResNet-101). In a systematic evaluation, using 5-fold re-sampling and a multi-label loss function, we compare the performance of the different approaches for pathology classification by ROC statistics and analyze differences between the classifiers using rank correlation. Overall, we observe a considerable spread in the achieved performance and conclude that the X-ray-specific ResNet-38, integrating non-image data yields the best overall results. Furthermore, class activation maps are used to understand the classification process, and a detailed analysis of the impact of non-image features is provided.

KW - Journal Article

U2 - 10.1038/s41598-019-42294-8

DO - 10.1038/s41598-019-42294-8

M3 - SCORING: Journal article

C2 - 31011155

VL - 9

SP - 6381

JO - SCI REP-UK

JF - SCI REP-UK

SN - 2045-2322

IS - 1

ER -