Artigo Acesso aberto Revisado por pares

Automatic detection of rib fractures: Are we there yet?

2020; Elsevier BV; Volume: 63; Linguagem: Inglês

10.1016/j.ebiom.2020.103158

ISSN

2352-3964

Autores

Alain Blum, Romain Gillet, Ayla Urbaneja, Pedro Augusto Gondim Teixeira,

Tópico(s)

Traumatic Ocular and Foreign Body Injuries

Resumo

The diagnosis of traumatic rib fractures is of clinical importance as these lesions are markers of severe injury. Whole-body computed tomography has become standard practice in the management of severely injured trauma patients, but the rate of missed diagnosis of rib fractures is likely high. Therefore, it is necessary to improve the rib fracture diagnosis accuracy on CT to reduce the error rate. This justifies the development of new post-processing tools or artificial intelligence (AI) algorithms that could help analyze and interpret whole-body CT scans. Traumatic rib fractures represent the most common injury sustained following thoracic trauma [[1]Peek J. Ochen Y. Saillant N. Groenwold R.H.H. Leenen L.P.H. Uribe-Leitz T. et al.Traumatic rib fractures: a marker of severe injury. A nationwide study using the national trauma data bank.Trauma Surg Acute Care Open. 2020; 5e000441Crossref PubMed Scopus (5) Google Scholar]. Rib fractures are clinically relevant injuries associated with significant pulmonary morbidity and mortality, requiring prompt evaluation and management. The study of a large retrospective cohort study by Peek et al. confirmed that traumatic rib fractures must be considered as a surrogate marker of severe injury leading to worse patient outcomes [[1]Peek J. Ochen Y. Saillant N. Groenwold R.H.H. Leenen L.P.H. Uribe-Leitz T. et al.Traumatic rib fractures: a marker of severe injury. A nationwide study using the national trauma data bank.Trauma Surg Acute Care Open. 2020; 5e000441Crossref PubMed Scopus (5) Google Scholar]. In this study, the highest mortality rate was observed among patients with flail chest (13.0%). Despite some controversies, the number of rib fractures is frequently considered as an important predictor for overall trauma severity and mortality. Moreover, first rib fractures are associated with worse clinical outcomes [[2]Luceri R.E. Glass N.E. Bailey J.A. Sifri Z.C. Kunac A. Bonne S.L. et al.First rib fracture: a harbinger of severe trauma?.Am J Surg. 2018; 216: 740-744Summary Full Text Full Text PDF PubMed Scopus (4) Google Scholar]. Whole-body CT scanning is recommended as a standard of care in the primary management of polytraumatized patients [[3]Banaste N. Caurier B. Bratan F. Bergerot J.F. Thomson V. Millet I Whole-body CT in patients with multiple traumas: factors leading to missed injury.Radiology. 2018; 289: 374-383Crossref PubMed Scopus (24) Google Scholar]. Thus, radiologists are challenged to interpret thousands of images as quickly as possible to identify life-threatening injuries accurately. In this context, it is not surprising that certain injuries deemed of secondary importance are overlooked, especially in patients with multiple accompanying injuries [[3]Banaste N. Caurier B. Bratan F. Bergerot J.F. Thomson V. Millet I Whole-body CT in patients with multiple traumas: factors leading to missed injury.Radiology. 2018; 289: 374-383Crossref PubMed Scopus (24) Google Scholar]. For instance, the missed rib fractures rate may be as high as 20.7% [[5]Cho S.H. Sung Y.M. Kim M.S Missed rib fractures on evaluation of initial chest CT for trauma patients: pattern analysis and diagnostic value of coronal multiplanar reconstruction images with multidetector row CT.Br J Radiol. 2012; 85: e845-e850Crossref PubMed Scopus (53) Google Scholar]. Although the vast majority of missed injuries are considered minor, as Pinto et al. stated, missed diagnoses have potentially important consequences for patients, clinicians, and radiologists [[4]Pinto A. Reginelli A. Pinto F. Lo Re G. Midiri F. Muzj C. et al.Errors in imaging patients in the emergency setting.Br J Radiol. 2016; 8920150914Crossref PubMed Scopus (34) Google Scholar]. To reduce the risk of errors, some authors advocate a double-reading of the whole-body CT studies in patients with a high-risk for missed lesions, notably those with injuries to two or more body parts, older than 30 years or with a severe initial clinical status [[3]Banaste N. Caurier B. Bratan F. Bergerot J.F. Thomson V. Millet I Whole-body CT in patients with multiple traumas: factors leading to missed injury.Radiology. 2018; 289: 374-383Crossref PubMed Scopus (24) Google Scholar]. However, double-reading may not be feasible in some institutions due to limited human resources (radiologist shortage), the need for a prompt final report, and the lack of financial compensation for this activity. Unfolded rib reformation is a new post-processing tool that provides automatic curved multiplanar reconstructions of the ribs, allowing the visualization of the entire rib cage in the same image plane [[6]Blum A. Gillet R. Rauch A. Urbaneja A. Biouichi H. Dodin G. et al.3D reconstructions, 4D imaging and post-processing with CT in musculoskeletal disorders: past, present and future.Diagn Interv Imaging. 2020; 101: 693-705Crossref PubMed Scopus (11) Google Scholar]. This tool is a substitute for the tedious process of rib-by-rib analysis, allowing a faster and more accurate rib fractures diagnosis. One of the main advantages of unfolded rib reformation is the rapid fracture location assessment. In a study by Urbaneja et al., this tool allowed a 27% to 54% reduction in reading time while maintaining a similar diagnostic performance [[7]Urbaneja A. De Verbizier J. Formery A.S. Tobon-Gomez C. Nace L. Blum A. et al.Automatic rib cage unfolding with CT cylindrical projection reformat in polytraumatized patients for rib fracture detection and characterization: feasibility and clinical application.Eur J Radiol. 2019; 110: 121-127Summary Full Text Full Text PDF PubMed Scopus (12) Google Scholar]. However, unfolded rib reformation requires an adequate training period to prevent interpretation errors (e.g., fractures located at the rib extremities may be difficult to identify) and differentiate between past and recent fractures. A complementary approach comprises algorithms based on deep convolutional neural networks (CNN). The number of CNN algorithms for fracture detection on CT is limited, and there are only a few studies evaluating their clinical application. For Weikert and al., the CNN algorithms reached a sensitivity of 87.4% and a specificity of 91.5% for rib fracture detection on a per-examination level, and many true rib fractures unmentioned on reports were detected [[8]Weikert T. Noordtzij L.A. Bremerich J. Stieltjes B. Parmar V. Cyriac J. et al.Assessment of a deep learning algorithm for the detection of rib fractures on whole-body trauma computed tomography.Korean J Radiol. 2020; 21: 891-899Crossref PubMed Scopus (15) Google Scholar]. Zhou et al. showed that AI-assisted radiologists significantly improved their accuracy for rib fracture identification (91.1% with AI assistance vs. 80.3% without assistance) with a reduction of the reading time [[9]Zhou Q.Q. Wang J. Tang W. Hu Z.C. Xia Z.Y. Li X.S. et al.Automatic detection and classification of rib fractures on thoracic CT using convolutional neural network: accuracy and feasibility.Korean J Radiol. 2020; 21: 869-879Crossref PubMed Scopus (16) Google Scholar]. Finally, the algorithm developed by Jin et al. and presented in the recent issue of EBioMedicine, achieved a 92.9% sensitivity for rib fracture diagnosis, which was significantly higher than that of radiologists (75.9 and 79.1%) [[10]Jin L. Yang J. Kuang K. Ni B. Gao Y. Sun Y.N. et al.Deep-learning-assisted detection and segmentation of rib fractures from CT scans: development and validation of FracNet.EBioMedecine. 2020; 62https://doi.org/10.1016/j.ebiom.2020.103106Summary Full Text Full Text PDF Scopus (14) Google Scholar]. These studies suggest that AI-assisted rib fracture diagnosis can improve accuracy and reduce interpretation time with a potential positive impact on radiologists' workload. To be fully accepted by radiologists, ideally, such algorithms must also be able to characterize fractures to a certain extent (acute, healing, old, displaced), locate them precisely and generate a structured report, and above all, highlight factors with a prognostic impact such as a flail chest, total number of fractured ribs and first rib fractures. Finally, it is important to note that at this stage of development, these tools can assist radiologists but not replace them, mainly because some artifacts, such as breathing artifacts, can generate false-positive diagnoses. To conclude, current results on deep-learning-assisted rib fractures detection are very promising, demonstrating that AI can be seen as a "wingman" for image interpretation and should be integrated into the radiology workflow. All authors contributed to this commentary through literature search. All authors have read and approved the final version of the manuscript. Two of the authors (Alain Blum and Pedro Gondim Teixeira) have a non-remunerated research contract with Canon Medical company. The other authors have no potential conflicts of interest to disclose. The authors state that this work has not received any funding. Deep-learning-assisted detection and segmentation of rib fractures from CT scans: Development and validation of FracNetThe proposed FracNet provided increasing detection sensitivity of rib fractures with significantly decreased clinical time consumed, which established a clinically applicable method to assist the radiologist in clinical practice. Full-Text PDF Open Access

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