Reducing Annotation Need in Self-explanatory Models for Lung Nodule Diagnosis

Research output: Chapter in Book/Report/Conference proceedingArticle in proceedingsResearchpeer-review

Standard

Reducing Annotation Need in Self-explanatory Models for Lung Nodule Diagnosis. / Lu, Jiahao; Yin, Chong; Krause, Oswin; Erleben, Kenny; Nielsen, Michael Bachmann; Darkner, Sune.

Interpretability of Machine Intelligence in Medical Image Computing. ed. / M Reyes; PH Abreu; J Cardoso. Springer, 2022. p. 33-43 (Lecture Notes in Computer Science, Vol. 13611).

Research output: Chapter in Book/Report/Conference proceedingArticle in proceedingsResearchpeer-review

Harvard

Lu, J, Yin, C, Krause, O, Erleben, K, Nielsen, MB & Darkner, S 2022, Reducing Annotation Need in Self-explanatory Models for Lung Nodule Diagnosis. in M Reyes, PH Abreu & J Cardoso (eds), Interpretability of Machine Intelligence in Medical Image Computing. Springer, Lecture Notes in Computer Science, vol. 13611, pp. 33-43, 5th International Workshop on Interpretability of Machine Intelligence in Medical Image Computing (IMIMIC), Singapore, Singapore, 22/09/2022. https://doi.org/10.1007/978-3-031-17976-1_4

APA

Lu, J., Yin, C., Krause, O., Erleben, K., Nielsen, M. B., & Darkner, S. (2022). Reducing Annotation Need in Self-explanatory Models for Lung Nodule Diagnosis. In M. Reyes, PH. Abreu, & J. Cardoso (Eds.), Interpretability of Machine Intelligence in Medical Image Computing (pp. 33-43). Springer. Lecture Notes in Computer Science Vol. 13611 https://doi.org/10.1007/978-3-031-17976-1_4

Vancouver

Lu J, Yin C, Krause O, Erleben K, Nielsen MB, Darkner S. Reducing Annotation Need in Self-explanatory Models for Lung Nodule Diagnosis. In Reyes M, Abreu PH, Cardoso J, editors, Interpretability of Machine Intelligence in Medical Image Computing. Springer. 2022. p. 33-43. (Lecture Notes in Computer Science, Vol. 13611). https://doi.org/10.1007/978-3-031-17976-1_4

Author

Lu, Jiahao ; Yin, Chong ; Krause, Oswin ; Erleben, Kenny ; Nielsen, Michael Bachmann ; Darkner, Sune. / Reducing Annotation Need in Self-explanatory Models for Lung Nodule Diagnosis. Interpretability of Machine Intelligence in Medical Image Computing. editor / M Reyes ; PH Abreu ; J Cardoso. Springer, 2022. pp. 33-43 (Lecture Notes in Computer Science, Vol. 13611).

Bibtex

@inproceedings{de1360da3bcd4180ab105e557e69e668,
title = "Reducing Annotation Need in Self-explanatory Models for Lung Nodule Diagnosis",
abstract = "Feature-based self-explanatory methods explain their classification in terms of human-understandable features. In the medical imaging community, this semantic matching of clinical knowledge adds significantly to the trustworthiness of the AI. However, the cost of additional annotation of features remains a pressing issue. We address this problem by proposing cRedAnno, a data-/annotation-efficient self-explanatory approach for lung nodule diagnosis. cRedAnno considerably reduces the annotation need by introducing self-supervised contrastive learning to alleviate the burden of learning most parameters from annotation, replacing end-to-end training with two-stage training. When training with hundreds of nodule samples and only 1% of their annotations, cRedAnno achieves competitive accuracy in predicting malignancy, meanwhile significantly surpassing most previous works in predicting nodule attributes. Visualisation of the learned space further indicates that the correlation between the clustering of malignancy and nodule attributes coincides with clinical knowledge. Our complete code is open-source available: https://github.com/diku-dk/credanno.",
keywords = "Explainable AI, Lung nodule diagnosis, Self-explanatory model, Intrinsic explanation, Self-supervised learning",
author = "Jiahao Lu and Chong Yin and Oswin Krause and Kenny Erleben and Nielsen, {Michael Bachmann} and Sune Darkner",
year = "2022",
doi = "10.1007/978-3-031-17976-1_4",
language = "English",
isbn = "978-3-031-17975-4",
series = "Lecture Notes in Computer Science",
publisher = "Springer",
pages = "33--43",
editor = "M Reyes and PH Abreu and J Cardoso",
booktitle = "Interpretability of Machine Intelligence in Medical Image Computing",
address = "Switzerland",
note = "5th International Workshop on Interpretability of Machine Intelligence in Medical Image Computing (IMIMIC) ; Conference date: 22-09-2022",

}

RIS

TY - GEN

T1 - Reducing Annotation Need in Self-explanatory Models for Lung Nodule Diagnosis

AU - Lu, Jiahao

AU - Yin, Chong

AU - Krause, Oswin

AU - Erleben, Kenny

AU - Nielsen, Michael Bachmann

AU - Darkner, Sune

PY - 2022

Y1 - 2022

N2 - Feature-based self-explanatory methods explain their classification in terms of human-understandable features. In the medical imaging community, this semantic matching of clinical knowledge adds significantly to the trustworthiness of the AI. However, the cost of additional annotation of features remains a pressing issue. We address this problem by proposing cRedAnno, a data-/annotation-efficient self-explanatory approach for lung nodule diagnosis. cRedAnno considerably reduces the annotation need by introducing self-supervised contrastive learning to alleviate the burden of learning most parameters from annotation, replacing end-to-end training with two-stage training. When training with hundreds of nodule samples and only 1% of their annotations, cRedAnno achieves competitive accuracy in predicting malignancy, meanwhile significantly surpassing most previous works in predicting nodule attributes. Visualisation of the learned space further indicates that the correlation between the clustering of malignancy and nodule attributes coincides with clinical knowledge. Our complete code is open-source available: https://github.com/diku-dk/credanno.

AB - Feature-based self-explanatory methods explain their classification in terms of human-understandable features. In the medical imaging community, this semantic matching of clinical knowledge adds significantly to the trustworthiness of the AI. However, the cost of additional annotation of features remains a pressing issue. We address this problem by proposing cRedAnno, a data-/annotation-efficient self-explanatory approach for lung nodule diagnosis. cRedAnno considerably reduces the annotation need by introducing self-supervised contrastive learning to alleviate the burden of learning most parameters from annotation, replacing end-to-end training with two-stage training. When training with hundreds of nodule samples and only 1% of their annotations, cRedAnno achieves competitive accuracy in predicting malignancy, meanwhile significantly surpassing most previous works in predicting nodule attributes. Visualisation of the learned space further indicates that the correlation between the clustering of malignancy and nodule attributes coincides with clinical knowledge. Our complete code is open-source available: https://github.com/diku-dk/credanno.

KW - Explainable AI

KW - Lung nodule diagnosis

KW - Self-explanatory model

KW - Intrinsic explanation

KW - Self-supervised learning

U2 - 10.1007/978-3-031-17976-1_4

DO - 10.1007/978-3-031-17976-1_4

M3 - Article in proceedings

SN - 978-3-031-17975-4

T3 - Lecture Notes in Computer Science

SP - 33

EP - 43

BT - Interpretability of Machine Intelligence in Medical Image Computing

A2 - Reyes, M

A2 - Abreu, PH

A2 - Cardoso, J

PB - Springer

T2 - 5th International Workshop on Interpretability of Machine Intelligence in Medical Image Computing (IMIMIC)

Y2 - 22 September 2022

ER -

ID: 324695516