16 December 2020 Performance of clinically available deep learning image reconstruction in computed tomography: a phantom study
Hiroki Kawashima, Katsuhiro Ichikawa, Tadanori Takata, Wataru Mitsui, Hiroshi Ueta, Norihide Yoneda, Satoshi Kobayashi
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Abstract

Purpose: To assess the physical performance of deep learning image reconstruction (DLIR) compared with those of filtered back projection (FBP) and iterative reconstruction (IR) and to estimate the dose reduction potential of the technique.

Approach: A cylindrical water bath phantom with a diameter of 300 mm including two rods composed of acrylic and soft tissue-equivalent material was scanned using a clinical computed tomography (CT) scanner at four dose levels (CT dose index of 20, 15, 10, and 5 mGy). Phantom images were reconstructed using FBP, DLIR, and IR. The in-plane and z axis task transfer functions (TTFs) and in-plane noise power spectrum (NPS) were measured. The dose reduction potential was estimated by evaluating the system performance function calculated from TTF and NPS. The visibilities of a bar pattern phantom placed in the same water bath phantom were compared.

Results: The use of DLIR resulted in a notable decrease in noise magnitude. The shift in peak NPS frequency was reduced compared with IR. Preservation of in-plane TTF was superior using DLIR than using IR. The estimated dose reduction potentials of DLIR and IR were 39% to 54% and 19% to 29%, respectively. However, the z axis resolution was decreased with DLIR by 6% to 21% compared with FBP. The bar pattern visibilities were approximately consistent with the TTF results in both planes.

Conclusions: The in-plane edge-preserving noise reduction performance of DLIR is superior to that of IR. Moreover, DLIR enables approximately half-dose acquisitions with no deterioration in noise texture in cases that permit some z axis resolution reduction.

© 2020 Society of Photo-Optical Instrumentation Engineers (SPIE) 2329-4302/2020/$28.00 © 2020 SPIE
Hiroki Kawashima, Katsuhiro Ichikawa, Tadanori Takata, Wataru Mitsui, Hiroshi Ueta, Norihide Yoneda, and Satoshi Kobayashi "Performance of clinically available deep learning image reconstruction in computed tomography: a phantom study," Journal of Medical Imaging 7(6), 063503 (16 December 2020). https://doi.org/10.1117/1.JMI.7.6.063503
Received: 24 July 2020; Accepted: 1 December 2020; Published: 16 December 2020
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Cited by 9 scholarly publications.
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KEYWORDS
Computed tomography

Image restoration

Infrared imaging

Denoising

Tissues

Image resolution

Image quality

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