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1 timates and those of the reference standard, bone age.
2  specific craniofacial features and advanced bone age.
3  adolescents usually show delayed growth and bone age.
4 e model estimates and the reference standard bone ages.
5 de point to a primary role for osteocytes in bone aging.
6                        The ability to assess bone age accurately is important and allows to diagnose
7 antiandrogens appear effective in preventing bone age advancement and virilization in boys with famil
8 anastrozole, decreased bleeding episodes and bone age advancement in girls with McCune-Albright syndr
9                                              Bone age among HIV(-) adolescents with a history of inhi
10 lipodystrophic mice, we observed an advanced bone age, an indirect reflection of premature bone forma
11 were applied to test the association between bone age and anthropometry, adjusting for covariates inc
12 t of using cephalometric images to determine bone age and its significance for conducting appropriate
13                                      Delayed bone age and seizure disorders were overrepresented in t
14 solute difference (MAD) between ground-truth bone age and the model prediction bone age was calculate
15 predictors of regional body composition were bone age and weight.
16  both genders display significantly advanced bone ages and are oftentimes hypertensive.
17 nt, and to evaluate the associations between bone age, anthropometry, and diet.
18 of breast development, and the evaluation of bone age are useful tools for the imaging confirmation o
19 d-wrist radiographs using Bjork's method and bone age assessed from cephalometric radiographs using t
20 001) Pearson's correlation was found between bone age assessed from hand-wrist radiographs using Bjor
21 th automated and manual GP-based methods for bone age assessment and provides a foundation for develo
22 lation-specific deep learning algorithms for bone age assessment in modern pediatric populations.Supp
23 trauma hand radiograph-trained deep learning bone age assessment method [TDL-BAAM]) was trained on 15
24                                It seems that bone age assessment methods based on evaluating the morp
25 ogical progress in medicine and stomatology, bone age assessment methods need to be perfected in orde
26 o compare the performance of a deep-learning bone age assessment model based on hand radiographs with
27                                              Bone age assessment of bone age could also be made based
28                             Search criteria: bone age assessment, CVM method.
29 s appears to be the most desirable method of bone age assessment.
30 y was to evaluate the correspondence between bone age assessments made from hand-wrist radiographs an
31 n (R(2) = 0.59, RMSE = 1.8 cm) compared with bone age-based methods (height velocity: R(2) = 0.32, RM
32 usion tensor imaging may perform better than bone age-based models in children for the prediction of
33 ps) and compare the prediction accuracy with bone age-based models.
34  winning DL model of the 2017 RSNA Pediatric Bone Age Challenge was retrospectively evaluated and tra
35 e age model that won the 2017 RSNA Pediatric Bone Age Challenge was retrospectively evaluated using t
36 is Challenge, (ii) Regression-RSNA Pediatric Bone Age Challenge, (iii) Binary classification-GRAZPEDW
37 Radiological Society of North America (RSNA) Bone Age Challenge, 1642 images of normal Dutch and Cali
38 e matched for weight, body mass index (BMI), bone age, chronological age, Tanner breast stage, and so
39 ean absolute differences (MADs) of predicted bone ages compared with radiologist-determined ground tr
40                            The assessment of bone age comprises the basic element of orthodontic diag
41                       Bone age assessment of bone age could also be made based on an analysis of a mo
42  evaluate the robustness of an award-winning bone age deep learning (DL) model to extensive variation
43 arpal bones was the least important area for bone age determination.
44                                   Conclusion Bone age determined using tablet-based US was lower in c
45 nclusion Although an award-winning pediatric bone age DL model generalized well to curated external i
46 e To quantify generalizability and bias in a bone age DL model measured by performance on external ve
47 ted images, there were 12 times fewer severe bone age errors than in manual ratings, suggesting that
48 t, composed of 200 examinations, the mean of bone age estimates from the clinical report and three ad
49          Results The mean difference between bone age estimates of the model and of the reviewers was
50               Adult height was measured when bone age exceeded 16 years in girls and 17 years in boys
51 eXpert method for automated determination of bone age from hand X-rays was introduced in 2009 and is
52 in Adolescence (NCANDA), and determining the bone age from X-ray images of children.
53 e (AI) regression model for determining hand bone age from X-ray radiographs.
54                         The chronologic age, bone age, height, weight, body-surface area, and body-ma
55                                Assessment of bone age in children with use of the Greulich and Pyle a
56       Low BMD persisted after correction for bone age in girls with Crohn's disease (lumbar spine, P
57 of transabdominal pelvic ultrasonography and bone age in identifying the onset of puberty in girls at
58 ust 2017, tablet-based US was used to assess bone age in young children within their homes in rural C
59 so exhibited high PD values but contained no bone age information, suggesting a region of vulnerabili
60                Conclusion The RSNA Pediatric Bone Age Machine Learning Challenge showed how a coordin
61 al Society of North America (RSNA) Pediatric Bone Age Machine Learning Challenge was created to show
62  puberty, associated with an acceleration in bone-age maturation.
63 d bias in height prediction using DTI versus bone age methods.
64              Conclusion A deep learning (DL) bone age model generalized well to an external test set,
65                                          The bone age model generalized well to the external test set
66 terials and Methods In December 2021, the DL bone age model that won the 2017 RSNA Pediatric Bone Age
67 of the left hand revealed a notably advanced bone age of 15.5 years.
68 e children have reached adult height, with a bone age of at least 16 years in the boys and at least 1
69                                              Bone age of hand, wrist and cervical spine was assessed.
70                                              Bone age on hand-wrist radiographs was evaluated using t
71  for number of ossified centers (P < 0.008), bone age (P < 0.0001), and bone area (P < 0.003).
72                                              Bone age (P </= .05) was significantly overestimated in
73                                  Results Two bone age prediction algorithms were tested on hand radio
74 on of commercially available AI products for bone age prediction based on hand radiographs and lung n
75                                          For bone age prediction, the root mean square error (RMSE) a
76 onstrated expert-level ability for pediatric bone age prediction, they have shown poor generalizabili
77            We evaluated skeletal maturation (bone age), pubertal progression, serum testosterone leve
78                              Height, weight, bone age, pubertal status, skinfold thickness, and arm c
79 anthropometric assessment, pubertal staging, bone age radiography, and BMD assessment by dual energy
80                            Purpose To assess bone age using tablet-based US in young children living
81 ngs on pelvic and breast ultrasonography and bone age versus the baseline measurement of luteinizing
82 ound-truth bone age and the model prediction bone age was calculated for each set.
83 age-, and sexual maturity-based biases in DL bone age were identified.
84                Images reporting ground-truth bone age were included for study.
85 oyed a holistic approach in determining hand bone age, with the wrist area being the most important a
86                                              Bone age z scores (BAZs) were assigned using the standar