MAFIA-CT: MAchine Learning Tool for Image Quality Assessment in Computed Tomography

被引:3
作者
Lima, Thiago V. M. [1 ,2 ,3 ,4 ]
Melchior, Silvan [4 ]
Oezden, Ismail [4 ]
Nitzsche, Egbert [5 ]
Binder, Joerg [4 ]
Lutters, Gerd [4 ]
机构
[1] Luzerner Kantonsspital, Dept Radiol & Nucl Med, Luzern, Switzerland
[2] Lausanne Univ Hosp, Inst Radiat Phys, Lausanne, Switzerland
[3] Univ Lausanne, Lausanne, Switzerland
[4] Kantonsspital Aarau AG, Radiat Protect Grp, Aarau, Switzerland
[5] Kantonsspital Aarau AG, Nucl Med & PET Ctr, Aarau, Switzerland
来源
MEDICAL IMAGE UNDERSTANDING AND ANALYSIS (MIUA 2021) | 2021年 / 12722卷
关键词
Computed tomography; Deep learning; Image quality; PATIENT SIZE;
D O I
10.1007/978-3-030-80432-9_35
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Different metrics are available for evaluating image quality (IQ) in computed tomography (CT). One of those is human observer studies, unfortunately they are time consuming and susceptible to variability. With these in mind, we developed a platform, based on deep learning, to optimise the work-flow and score IQ based human observations of low contrast lesions. 1476 images (from 43 CT devices) were used. The platform was evaluated for its accuracy, reliability and performance in both held-out tests, synthetic data and designed measurements. Synthetic data to evaluate the model capabilities and performance regarding varying structures and background. Designed measurements to evaluate the model performance in characterising CT protocols and devices regarding protocol dose and reconstruction. We obtained 99.7% success rate on inlays detection and over 96% accuracy for given observer. From the synthetic data experiments, we observed a correlation between the minimum visible contrast and the lesion size; lesion's contrast and visibility degradation due to noise levels; and no influence from external lesions to the central lesions detectability by the model. From the measurements in relation to dose, only between 20 and 25 mGy protocols differences were not statistically significant (p-values 0.076 and 0.408, respectively for 5 and 8mm lesions). Additionally, our model showed improvements in IQ by using iterative reconstruction and the effect of reconstruction kernel. Our platform enables the evaluation of large data-sets without the variability and time-cost associated with human scoring and subsequently providing a reliable and relatable metric for dose harmonisation and imaging optimisation in CT.
引用
收藏
页码:472 / 487
页数:16
相关论文
共 50 条
[1]   Assessment of diagnostic image quality of computed tomography (CT) images of the lung using deep learning [J].
Lee, John H. ;
Grant, Byron R. ;
Chung, Jonathan H. ;
Reiser, Ingrid ;
Giger, Maryellen .
MEDICAL IMAGING 2018: PHYSICS OF MEDICAL IMAGING, 2018, 10573
[2]   Image Quality Assessment of Deep Learning Image Reconstruction in Torso Computed Tomography Using Tube Current Modulation [J].
Takeuchi, Kazuhiro ;
Ide, Yasuhiro ;
Mori, Yuichiro ;
Uehara, Yusuke ;
Sukeishi, Hiroshi ;
Goto, Sachiko .
ACTA MEDICA OKAYAMA, 2023, 77 (01) :45-55
[3]   Image quality and dose in computed tomography [J].
Jurik, AG ;
Jessen, KA ;
Hansen, J .
EUROPEAN RADIOLOGY, 1997, 7 (01) :77-81
[4]   Deep learning image reconstruction for quality assessment of iodine concentration in computed tomography: A phantom study [J].
Jeon, Pil-Hyun ;
Lee, Chang-Lae .
JOURNAL OF X-RAY SCIENCE AND TECHNOLOGY, 2023, 31 (02) :409-422
[5]   Image quality and dose in spiral computed tomography [J].
Verdun, FR ;
Meuli, RA ;
Bochud, FO ;
Imsand, C ;
Raimondi, S ;
Schnyder, P ;
Valley, JF .
EUROPEAN RADIOLOGY, 1996, 6 (04) :485-488
[6]   Assessment of image quality of two cone-beam computed tomography of the Varian Linear accelerators: Comparison with spiral CT simulator [J].
Ragab, H. ;
Abdelaziz, D. M. ;
Khalil, M. M. ;
Elbakry, M. N. Yasein .
INTERNATIONAL JOURNAL OF RADIATION RESEARCH, 2023, 21 (03) :491-498
[7]   Deep learning image reconstruction algorithms in low-dose radiation abdominal computed tomography: assessment of image quality and lesion diagnostic confidence [J].
Yang, Chun ;
Wang, Wenzhe ;
Cui, Dingye ;
Zhang, Jinliang ;
Liu, Ling ;
Wang, Yuxin ;
Li, Wei .
QUANTITATIVE IMAGING IN MEDICINE AND SURGERY, 2023, 13 (05) :3161-3173
[8]   Automatic head computed tomography image noise quantification with deep learning [J].
Inkinen, Satu I. ;
Makela, Teemu ;
Kaasalainen, Touko ;
Peltonen, Juha ;
Kangasniemi, Marko ;
Kortesniemi, Mika .
PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS, 2022, 99 :102-112
[9]   Deep learning image reconstruction for improvement of image quality of abdominal computed tomography: comparison with hybrid iterative reconstruction [J].
Yasutaka Ichikawa ;
Yoshinori Kanii ;
Akio Yamazaki ;
Naoki Nagasawa ;
Motonori Nagata ;
Masaki Ishida ;
Kakuya Kitagawa ;
Hajime Sakuma .
Japanese Journal of Radiology, 2021, 39 :598-604
[10]   Deep learning image reconstruction for improvement of image quality of abdominal computed tomography: comparison with hybrid iterative reconstruction [J].
Ichikawa, Yasutaka ;
Kanii, Yoshinori ;
Yamazaki, Akio ;
Nagasawa, Naoki ;
Nagata, Motonori ;
Ishida, Masaki ;
Kitagawa, Kakuya ;
Sakuma, Hajime .
JAPANESE JOURNAL OF RADIOLOGY, 2021, 39 (06) :598-604