SILA: a system for scientific image analysis

Author:

Moreira Daniel,Cardenuto João Phillipe,Shao Ruiting,Baireddy Sriram,Cozzolino Davide,Gragnaniello Diego,Abd-Almageed Wael,Bestagini Paolo,Tubaro Stefano,Rocha Anderson,Scheirer Walter,Verdoliva Luisa,Delp Edward

Abstract

AbstractA great deal of the images found in scientific publications are retouched, reused, or composed to enhance the quality of the presentation. In most instances, these edits are benign and help the reader better understand the material in a paper. However, some edits are instances of scientific misconduct and undermine the integrity of the presented research. Determining the legitimacy of edits made to scientific images is an open problem that no current technology can perform satisfactorily in a fully automated fashion. It thus remains up to human experts to inspect images as part of the peer-review process. Nonetheless, image analysis technologies promise to become helpful to experts to perform such an essential yet arduous task. Therefore, we introduce SILA, a system that makes image analysis tools available to reviewers and editors in a principled way. Further, SILA is the first human-in-the-loop end-to-end system that starts by processing article PDF files, performs image manipulation detection on the automatically extracted figures, and ends with image provenance graphs expressing the relationships between the images in question, to explain potential problems. To assess its efficacy, we introduce a dataset of scientific papers from around the globe containing annotated image manipulations and inadvertent reuse, which can serve as a benchmark for the problem at hand. Qualitative and quantitative results of the system are described using this dataset.

Funder

Defense Advanced Research Projects Agency

U.S. Department of Health and Human Services

Air Force Research Laboratory

Fundação de Amparo à Pesquisa do Estado de São Paulo

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

Reference57 articles.

1. Franklin, R. & Gosling, R. The structure of sodium thymonucleate fibres. I. The influence of water content. Acta Crystallogr. A 6, 673–677 (1953).

2. Sheng, J., Xu, S.,Deng, W. & Luo, X. Novel image features for categorizing biomedical images. In IEEE International Conference on Bioinformatics and Biomedicine, 1–6 (2012).

3. Valencia, J. Metastatic melanoma cells. https://visualsonline.cancer.gov/details.cfm?imageid=9872 (2015). Accessed 3 Aug 2022.

4. Ritter, A. Killer T cells surround a cancer cell. https://www.flickr.com/photos/nihgov/20673870162/in/album-72157656657569008/ (2015). Accessed 3 Aug 2022.

5. Pi, F., Zhang, H. & Guo, P. RNA nanoparticles in cancer cells. https://visualsonline.cancer.gov/details.cfm?imageid=11167 (2016). Accessed 3 Aug 2022.

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