Logo do repositório
 
A carregar...
Miniatura
Publicação

Cross-modality Lossless Compression of PET-CT Images

Utilize este identificador para referenciar este registo.
Nome:Descrição:Tamanho:Formato: 
Cross-modality lossless compression of PET-CT images.pdfThe huge amount of data resulting from the acquisition of medical images with multiple modalities can be overwhelming for storage and sharing through communication systems. Thus, efficient compression algorithms must be introduced to reduce the burden of storage and communication resources required by such amount of data. However, since in the medical context all details are important, the adoption of lossless image compression algorithms is paramount. This paper proposes a novel lossless compression scheme tailored to jointly compress the modality of computerized tomography (CT) and that of positron emission tomography (PET). Different approaches are adopted, namely image-to-image translation techniques and redundancies between both images are also explored. To perform the image-to-image translation approach, we resort to lossless compression of the original CT data and apply a cross-modality image translation generative adversarial network to obtain an estimation of the corresponding PET. Then, the residue that results from the differences between the original PET and its estimation is also compressed. Thus, instead of compressing two independent image modalities, i.e., both images of the original PET-CT pair, in the proposed approach only the CT is independently encoded along with the PET residue. The performed experiments using a publicly available PET-CT pair dataset show that the proposed scheme attains up to 8.9 % compression gains for the PET data, in comparison with the naive approach, and up to 3.5 % gains for the PET-CT pair.395.44 KBAdobe PDF Ver/Abrir

Orientador(es)

Resumo(s)

The huge amount of data resulting from the acquisition of medical images with multiple modalities can be overwhelming for storage and sharing through communication systems. Thus, efficient compression algorithms must be introduced to reduce the burden of storage and communication resources required by such amount of data. However, since in the medical context all details are important, the adoption of lossless image compression algorithms is paramount. This paper proposes a novel lossless compression scheme tailored to jointly compress the modality of computerized tomography (CT) and that of positron emission tomography (PET). Different approaches are adopted, namely image-to-image translation techniques and redundancies between both images are also explored. To perform the image-to-image translation approach, we resort to lossless compression of the original CT data and apply a cross-modality image translation generative adversarial network to obtain an estimation of the corresponding PET. Then, the residue that results from the differences between the original PET and its estimation is also compressed. Thus, instead of compressing two independent image modalities, i.e., both images of the original PET-CT pair, in the proposed approach only the CT is independently encoded along with the PET residue. The performed experiments using a publicly available PET-CT pair dataset show that the proposed scheme attains up to 8.9 % compression gains for the PET data, in comparison with the naive approach, and up to 3.5 % gains for the PET-CT pair.

Descrição

EISBN - 978-1-6654-1588-0
Date of Conference: 11-12 February 2021

Palavras-chave

Computerized tomography positron emission tomography HEVC Generative Adversarial Network image-toimage translation

Contexto Educativo

Citação

J. O. Parracho, L. A. Thomaz, L. M. N. Távora, P. A. A. Assunção and S. M. M. Faria, "Cross-modality Lossless Compression of PET-CT Images," 2021 Telecoms Conference (ConfTELE), Leiria, Portugal, 2021, pp. 1-6, doi: https://doi.org/10.1109/ConfTELE50222.2021.9435467.

Projetos de investigação

Unidades organizacionais

Fascículo

Editora

IEEE Canada

Licença CC

Sem licença CC

Métricas Alternativas