TY - JOUR
T1 - Image-to-Images Translation for Multi-Task Organ Segmentation and Bone Suppression in Chest X-Ray Radiography
AU - Eslami, Mohammad
AU - Tabarestani, Solale
AU - Albarqouni, Shadi
AU - Adeli, Ehsan
AU - Navab, Nassir
AU - Adjouadi, Malek
N1 - Publisher Copyright:
© 1982-2012 IEEE.
PY - 2020/7
Y1 - 2020/7
N2 - Chest X-ray radiography is one of the earliest medical imaging technologies and remains one of the most widely-used for diagnosis, screening, and treatment follow up of diseases related to lungs and heart. The literature in this field of research reports many interesting studies dealing with the challenging tasks of bone suppression and organ segmentation but performed separately, limiting any learning that comes with the consolidation of parameters that could optimize both processes. This study, and for the first time, introduces a multitask deep learning model that generates simultaneously the bone-suppressed image and the organ-segmented image, enhancing the accuracy of tasks, minimizing the number of parameters needed by the model and optimizing the processing time, all by exploiting the interplay between the network parameters to benefit the performance of both tasks. The architectural design of this model, which relies on a conditional generative adversarial network, reveals the process on how the well-established pix2pix network (image-to-image network) is modified to fit the need for multitasking and extending it to the new image-to-images architecture. The developed source code of this multitask model is shared publicly on Github as the first attempt for providing the two-task pix2pix extension, a supervised/paired/aligned/registered image-to-images translation which would be useful in many multitask applications. Dilated convolutions are also used to improve the results through a more effective receptive field assessment. The comparison with state-of-the-art algorithms along with ablation study and a demonstration video1 are provided to evaluate the efficacy and gauge the merits of the proposed approach.1https://youtu.be/J8Uth26_7rQhttps://youtu.be/J8Uth26_7rQ
AB - Chest X-ray radiography is one of the earliest medical imaging technologies and remains one of the most widely-used for diagnosis, screening, and treatment follow up of diseases related to lungs and heart. The literature in this field of research reports many interesting studies dealing with the challenging tasks of bone suppression and organ segmentation but performed separately, limiting any learning that comes with the consolidation of parameters that could optimize both processes. This study, and for the first time, introduces a multitask deep learning model that generates simultaneously the bone-suppressed image and the organ-segmented image, enhancing the accuracy of tasks, minimizing the number of parameters needed by the model and optimizing the processing time, all by exploiting the interplay between the network parameters to benefit the performance of both tasks. The architectural design of this model, which relies on a conditional generative adversarial network, reveals the process on how the well-established pix2pix network (image-to-image network) is modified to fit the need for multitasking and extending it to the new image-to-images architecture. The developed source code of this multitask model is shared publicly on Github as the first attempt for providing the two-task pix2pix extension, a supervised/paired/aligned/registered image-to-images translation which would be useful in many multitask applications. Dilated convolutions are also used to improve the results through a more effective receptive field assessment. The comparison with state-of-the-art algorithms along with ablation study and a demonstration video1 are provided to evaluate the efficacy and gauge the merits of the proposed approach.1https://youtu.be/J8Uth26_7rQhttps://youtu.be/J8Uth26_7rQ
KW - Bone suppression
KW - CXR imaging
KW - chest X-Ray
KW - image-to-image translation
KW - image-to-images translation
KW - multitask deep learning
KW - organ segmentation
KW - pix2pix
UR - http://www.scopus.com/inward/record.url?scp=85088233202&partnerID=8YFLogxK
U2 - 10.1109/TMI.2020.2974159
DO - 10.1109/TMI.2020.2974159
M3 - Article
C2 - 32078541
AN - SCOPUS:85088233202
SN - 0278-0062
VL - 39
SP - 2553
EP - 2565
JO - IEEE Transactions on Medical Imaging
JF - IEEE Transactions on Medical Imaging
IS - 7
M1 - 8999560
ER -