Artificial Intelligence (AI)-Based Systems for Automatic Skeletal Maturity Assessment through Bone and Teeth Analysis: A Revolution in the Radiological Workflow?

被引:8
作者
Caloro, Elena [1 ]
Ce, Maurizio [1 ]
Gibelli, Daniele [2 ]
Palamenghi, Andrea [2 ]
Martinenghi, Carlo [3 ]
Oliva, Giancarlo [4 ]
Cellina, Michaela [4 ]
机构
[1] Univ Milan, Postgrad Sch Radiodiagnost, Via Festa Perdono 7, I-20122 Milan, Italy
[2] Dipartimento Sci Biomed Salute, Via Luigi Mangiagalli 31, I-20133 Milan, Italy
[3] Osped San Raffaele, Radiol Dept, Via Olgettina 60, I-20132 Milan, Italy
[4] ASST Fatebenefratelli Sacco, Fatebenefratelli Hosp, Radiol Dept, Piazza Principessa Clotilde 3, I-20121 Milan, Italy
来源
APPLIED SCIENCES-BASEL | 2023年 / 13卷 / 06期
关键词
bone age assessment; artificial intelligence; machine learning; computer-aided detection; pediatric radiology; FORENSIC AGE ESTIMATION; GREULICH-PYLE METHOD; CHRONOLOGICAL AGE; APOPHYSEAL OSSIFICATION; RADIOGRAPHIC ASSESSMENT; COMPUTED-TOMOGRAPHY; ILIAC CREST; HAND-WRIST; ACCURACY; CHILDREN;
D O I
10.3390/app13063860
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Bone age is an indicator of bone maturity and is useful for the treatment of different pediatric conditions as well as for legal issues. Bone age can be assessed by the analysis of different skeletal segments and teeth and through several methods; however, traditional bone age assessment is a complicated and time-consuming process, prone to inter- and intra-observer variability. There is a high demand for fully automated systems, but creating an accurate and reliable solution has proven difficult. Deep learning technology, machine learning, and Convolutional Neural Networks-based systems, which are rapidly evolving, have shown promising results in automated bone age assessment. We provide the background of bone age estimation, its usefulness and traditional methods of assessment, and review the currently artificial-intelligence-based solutions for bone age assessment and the future perspectives of these applications.
引用
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页数:23
相关论文
共 125 条
[1]  
Aggarwal A., 2012, J ORAL SIGN, V4, P63
[2]   TW2 and TW3 bone ages: time to change? [J].
Ahmed, M. Lynn ;
Warner, Justin T. .
ARCHIVES OF DISEASE IN CHILDHOOD, 2007, 92 (04) :371-372
[3]   A computational TW3 classifier for skeletal maturity assessment.: A Computing with Words approach [J].
Aja-Fernández, S ;
de Luis-García, R ;
Martín-Fernández, MA ;
Alberola-López, C .
JOURNAL OF BIOMEDICAL INFORMATICS, 2004, 37 (02) :99-107
[4]   Applicability of two bone age assessment methods to children from Saudi Arabia [J].
Alshamrani, K. ;
Hewitt, A. ;
Offiah, A. C. .
CLINICAL RADIOLOGY, 2020, 75 (02) :156.e1-156.e9
[5]   Is the Greulich and Pyle atlas applicable to all ethnicities? A systematic review and meta-analysis [J].
Alshamrani, Khalaf ;
Messina, Fabrizio ;
Offiah, Amaka C. .
EUROPEAN RADIOLOGY, 2019, 29 (06) :2910-2923
[6]   Breast Cancer Detection in Thermography Using Convolutional Neural Networks (CNNs) with Deep Attention Mechanisms [J].
Alshehri, Alia ;
AlSaeed, Duaa .
APPLIED SCIENCES-BASEL, 2022, 12 (24)
[7]   The uncovered biases and errors in clinical determination of bone age by using deep learning models [J].
Bai, Mei ;
Gao, Liangxin ;
Ji, Min ;
Ge, Jianbang ;
Huang, Lingyun ;
Qiao, HaoChen ;
Xiao, Jing ;
Chen, Xiaotian ;
Yang, Bin ;
Sun, Yingqi ;
Zhang, Minjie ;
Zhang, Wenjie ;
Luo, Feihong ;
Yang, Haowei ;
Mei, Haibing ;
Qiao, Zhongwei .
EUROPEAN RADIOLOGY, 2023, 33 (05) :3544-3556
[8]  
BANJSAK L, 2020, BULL INT ASSOC PALEO, V14, P122
[9]   Generalizability and Bias in a Deep Learning Pediatric Bone Age Prediction Model Using Hand Radiographs [J].
Beheshtian, Elham ;
Putman, Kristin ;
Santomartino, Samantha M. ;
Parekh, Vishwa S. ;
Yi, Paul H. .
RADIOLOGY, 2023, 306 (02)
[10]   Assessment of adulthood in the living Spanish population based on ossification of the medial clavicle epiphysis using ultrasound methods [J].
Benito, Maria ;
Munoz, Alexandra ;
Beltran, Isabel ;
Labajo, Elena ;
Perea, Bernardo ;
Antonio Sanchez, Jose .
FORENSIC SCIENCE INTERNATIONAL, 2018, 284 :161-166