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Computer-aided Assessment of Catheters and Tubes on Radiographs: How Good Is Artificial Intelligence for Assessment?

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Date 2021 May 3
PMID 33937813
Citations 13
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Abstract

Catheters are the second most common abnormal finding on radiographs. The position of catheters must be assessed on all radiographs because serious complications can arise if catheters are malpositioned. However, due to the large number of radiographs obtained each day, there can be substantial delays between the time a radiograph is obtained and when it is interpreted by a radiologist. Computer-aided approaches hold the potential to assist in prioritizing radiographs with potentially malpositioned catheters for interpretation and automatically insert text indicating the placement of catheters in radiology reports, thereby improving radiologists' efficiency. After 50 years of research in computer-aided diagnosis, there is still a paucity of study in this area. With the development of deep learning approaches, the problem of catheter assessment is far more solvable. This review provides an overview of current algorithms and identifies key challenges in building a reliable computer-aided diagnosis system for assessment of catheters on radiographs. This review may serve to further the development of machine learning approaches for this important use case. © RSNA, 2020.

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References
1.
Jain S . A pictorial essay: Radiology of lines and tubes in the intensive care unit. Indian J Radiol Imaging. 2011; 21(3):182-90. PMC: 3190489. DOI: 10.4103/0971-3026.85365. View

2.
Chen S, Zhang M, Yao L, Xu W . Endotracheal tubes positioning detection in adult portable chest radiography for intensive care unit. Int J Comput Assist Radiol Surg. 2016; 11(11):2049-2057. DOI: 10.1007/s11548-016-1430-3. View

3.
Muhm M, Sunder-Plassmann G, Apsner R, Pernerstorfer T, Rajek A, Lassnigg A . Malposition of central venous catheters. Incidence, management and preventive practices. Wien Klin Wochenschr. 1997; 109(11):400-5. View

4.
Kao E, Jaw T, Li C, Chou M, Liu G . Automated detection of endotracheal tubes in paediatric chest radiographs. Comput Methods Programs Biomed. 2014; 118(1):1-10. DOI: 10.1016/j.cmpb.2014.10.009. View

5.
Lee H, Mansouri M, Tajmir S, Lev M, Do S . A Deep-Learning System for Fully-Automated Peripherally Inserted Central Catheter (PICC) Tip Detection. J Digit Imaging. 2017; 31(4):393-402. PMC: 6113157. DOI: 10.1007/s10278-017-0025-z. View