DICOM Sequence Selection For Medical Imaging Applications

被引:1
作者
Brzus, Michal [1 ]
Riley, Cavan J. [1 ]
Bruss, Joel [2 ]
Boes, Aaron [2 ]
Jones, Randall [4 ]
Johnson, Hans J. [1 ,3 ]
机构
[1] Univ Iowa, Dept Elect & Comp Engn, Iowa City, IA 52242 USA
[2] Univ Iowa, Carver Coll Med, Dept Neurol, Iowa City, IA USA
[3] Univ Iowa, Dept Biomed Engn, Iowa City, IA 52242 USA
[4] Botimageai, Omaha, NE USA
来源
IMAGING INFORMATICS FOR HEALTHCARE, RESEARCH, AND APPLICATIONS, MEDICAL IMAGING 2024 | 2024年 / 12931卷
关键词
DICOM; modality; classification; selection; machine learning; medical imaging;
D O I
10.1117/12.3006568
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
A critical, often overlooked barrier to implementing automated analysis tools in the clinical setting is identifying the subset of acquired in a scanning session DICOM objects appropriate for automated analysis. Although the DICOM standard has rich metadata with specific fields describing the collected sequence, the text input description fields are often unreliable due to the lack of rigorous constraints. Automating clinical and research applications requires better identification and selection processes for the increasing utilization of image processing applications, CAD systems, and the need for huge multi-site datasets with data from multiple source devices and manufacturers. The medical imaging field urgently needs a tool for automated image-type classification. In this work, we developed a robust, easily extensible classification framework that extracts key features from well-characterized DICOM header fields to identify image modality and acquisition plane. Utilizing classical machine learning paradigms and a heterogeneous dataset of over 250 thousands scan volumes collected over 50 sites, using 77 scanners models, we achieved 98.9% accuracy during the K-Fold Cross-Validation for classifying 12 image modalities and 99.96% accuracy on image acquisition plane classification. Furthermore, we demonstrated model generalizability by achieving 95.7% accuracy on out-of-sample animal data. Our proposed framework can be crucial in eliminating error-prone human interaction, allowing automatization, and increasing imaging applications' reliability and efficiency. The proposed framework has been released as an open-source project and is readily accessible as a Python pip package under the name dcm-classifier.
引用
收藏
页数:10
相关论文
共 14 条
[1]   Diagnostic accuracy of deep learning in medical imaging: a systematic review and meta-analysis [J].
Aggarwal, Ravi ;
Sounderajah, Viknesh ;
Martin, Guy ;
Ting, Daniel S. W. ;
Karthikesalingam, Alan ;
King, Dominic ;
Ashrafian, Hutan ;
Darzi, Ara .
NPJ DIGITAL MEDICINE, 2021, 4 (01)
[2]  
Anaya-Isaza A., 2021, Informatics in Medicine Unlocked, V26, DOI DOI 10.1016/J.IMU.2021.100723
[3]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[4]   PigSNIPE: Scalable Neuroimaging Processing Engine for Minipig MRI [J].
Brzus, Michal ;
Knoernschild, Kevin ;
Sieren, Jessica C. ;
Johnson, Hans J. .
ALGORITHMS, 2023, 16 (02)
[5]  
Halchenko Y., 2023, nipy/heudiconv: v0.12.0
[6]   SynthStrip: skull-stripping for any brain image [J].
Hoopes, Andrew ;
Mora, Jocelyn S. ;
Dalca, Adrian V. ;
Fischl, Bruce ;
Hoffmann, Malte .
NEUROIMAGE, 2022, 260
[7]  
Johnson H. J., 2015, Template:The ITK Software Guide Book 1: Introduction and Development Guidelines, V1
[8]   Deep Learning in Medical Imaging [J].
Kim, Mingyu ;
Yun, Jihye ;
Cho, Yongwon ;
Shin, Keewon ;
Jang, Ryoungwoo ;
Bae, Hyun-jin ;
Kim, Namkug .
NEUROSPINE, 2019, 16 (04) :657-668
[9]   Deep learning [J].
LeCun, Yann ;
Bengio, Yoshua ;
Hinton, Geoffrey .
NATURE, 2015, 521 (7553) :436-444
[10]   The first step for neuroimaging data analysis: DICOM to NIfTI conversion [J].
Li, Xiangrui ;
Morgan, Paul S. ;
Ashburner, John ;
Smith, Jolinda ;
Rorden, Christopher .
JOURNAL OF NEUROSCIENCE METHODS, 2016, 264 :47-56