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1 BNP would look without disease (a "healthy" radiograph).
2 ory signs and absence of infiltrate on chest radiograph).
3 738 weight-bearing anterior-posterior pelvic radiographs).
4 onary infection represented 2.0% (39 of 1964 radiographs).
5 cementoenamel junction to the root apex, on radiographs).
6 ation was performed with a supine and a Fisk radiograph.
7 Figure 1: Anteroposterior pelvic radiograph.
8 oporosis as assessed by clinical history and radiograph.
9 nd significantly outperformed portable chest radiograph.
10 tal dimension analysis on digital periapical radiographs.
11 ntly less likely to have cavitation on chest radiographs.
12 ted wrist fractures and negative findings on radiographs.
13 tudies, with 87% of patients receiving chest radiographs.
14 dule or mass, and fracture) on frontal chest radiographs.
15 for detection of COVID-19 pneumonia on chest radiographs.
16 identify the presence of calculus on digital radiographs.
17 ic validation consisting of routine clinical radiographs.
18 gnosis system for assessment of catheters on radiographs.
19 wrist fracture but with negative findings on radiographs.
20 gion of mandibular first molar on periapical radiographs.
21 of COVID-19 in humans, were visible in lung radiographs.
22 BL) were assessed using standardized digital radiographs.
23 r automated prioritization of abnormal chest radiographs.
24 nce automated binary classification of chest radiographs.
25 lation by using an independent set of 15 887 radiographs.
26 age in a curated data set of pediatric hand radiographs.
27 ere used to classify clinical LRTI and chest radiographs.
28 hich consisted of 1007 posteroanterior chest radiographs.
29 ormalized heights and hand skeletal maturity radiographs.
30 te changes in the pin position on plain film radiographs.
31 tal CBL was measured on standardized digital radiographs.
32 Ns) for detecting tuberculosis (TB) on chest radiographs.
33 BL) around all teeth was measured on digital radiographs.
34 e were no arterial placements found on chest radiographs.
35 at physical examination or on initial plain radiographs.
36 egions of the joint that are not captured by radiographs.
37 bicortical fracture of the scaphoid waist on radiographs.
38 se with and without changes evident on plain radiographs.
39 e the second most common abnormal finding on radiographs.
40 vels using standardized intraoral periapical radiographs.
41 l SWMR MIP-images, T1weighted MIP-images and radiographs.
42 and it is frequently performed after initial radiographs.
43 eumonia from non-COVID-19 pneumonia on chest radiographs.
44 Results A data set consisting of 14 236 hand radiographs (12 611 training set, 1425 validation set, 2
50 fied radiologists who evaluated supine chest radiographs according to side-separate reading scores fo
52 ed collection of prospectively labeled chest radiographs achieved high diagnostic performance in the
54 ed using one manufacturer (Siemens) to chest radiographs acquired using another (Philips), producing
55 to translate texture information from chest radiographs acquired using one manufacturer (Siemens) to
60 radiographic hip osteoarthritis features on radiographs and compare its performance to that of atten
61 rs and radiographic findings from periapical radiographs and Cone Beam Computed Tomographies (CBCT) w
63 ity (BMD) could be derived from CT localizer radiographs and could potentially enable opportunistic o
64 Prevention criteria for EVALI and had chest radiographs and CT images available at initial presentat
65 rface (CANDI) for collaboratively annotating radiographs and evaluating how algorithms alter human in
66 , including 61 women and 40 men, referred to radiographs and MR examinations by rheumatologists due t
69 asked to the previous diagnosis examined the radiographs and patient data to make a diagnosis based o
70 also showed reduced pulmonary infiltrates on radiographs and reduced virus titres in bronchoalveolar
71 ogists have traditionally focused on frontal radiographs and the measurement of scoliosis curves as i
74 mal images accounted for 98.0% (1925 of 1964 radiographs) and findings of pulmonary infection represe
75 nia were no fever, no consolidation on chest radiograph, and absolute neutrophil count <5 x 109/L at
77 nts had pulmonary ultrasound, portable chest radiograph, and chest CT performed within 24 hours of in
78 g for carbon monoxide, pulse oximetry, chest radiograph, and high-resolution thoracic computerized to
80 period, unadjusted arterial blood gas, chest radiograph, and RBC utilization in the intervention peri
82 8 fewer arterial blood gases, 73 fewer chest radiographs, and 16 fewer RBCs per 100 patients (p < 0.0
83 tisfaction outcomes, digital photographs and radiographs, and changes in probing depth, clinical atta
92 erienced radiologists categorized each chest radiograph as characteristic, nonspecific, or negative i
93 yzed the free-text report to prioritize each radiograph as critical, urgent, nonurgent, or normal.
94 enced radiologists who identified fake chest radiographs as belonging to a target manufacturer class.
95 s, ML classifiers categorized the fake chest radiographs as belonging to the target manufacturer rath
96 rd, the AI system correctly classified chest radiographs as COVID-19 pneumonia with an area under the
97 d-to-end interpretable model that takes full radiographs as input and predicts KL scores with state-o
99 set was used to train CNNs to classify chest radiographs as normal or abnormal before evaluation on a
100 c performance in the classification of chest radiographs as normal or abnormal; this function may be
102 ty; and percentage of opacification on chest radiograph at drain removal and at 30, 90, and 180 days.
104 are accurate and precise using two localizer radiographs at different tube voltages from energy-integ
105 osition of catheters must be assessed on all radiographs because serious complications can arise if c
107 rall rate of hip fractures not identified on radiographs but that require surgery (ie, surgical hip f
112 nce of vertebral fractures as assessed using radiographs collected at baseline, 6 and 12 months, year
113 king into account a distortion rate for each radiograph compared with original implant measurements.
114 d with increased severity on admission chest radiographs compared with White or non-Hispanic patients
120 A-LRI and overall rates of visits with chest radiograph (CXR) examination in the pediatrics emergency
121 CAAP, NA-LRIs, and overall visits with chest radiograph (CXR) examination rates in the pediatric emer
122 microbiologically confirmed cases and chest radiograph (CXR)-positive cases compared to controls.
126 vailable National Institutes of Health chest radiograph dataset comprising 112 120 chest radiographic
129 g was applied to DS1 to account for positive radiograph enrichment and estimate population-level perf
131 nical decision support tool for supine chest radiograph examinations in the clinical routine with hig
133 criteria with bilateral infiltrates on chest radiograph experience a more intense early inflammatory
134 visualizing neural network learning of chest radiograph features in congestive heart failure (CHF).
136 dels for detecting clinically relevant chest radiograph findings were developed for this study by usi
137 t of pulmonary ultrasound and portable chest radiograph findings with correlating lobe ("lobe-specifi
138 ulin skin test, syphilis serology, and chest radiograph) followed by more complex investigations acco
139 lly relevant complications detected on chest radiographs following ultrasound-guided right internal j
140 lly relevant complications detected on chest radiographs following ultrasound-guided right internal j
141 ween pulmonary ultrasound and portable chest radiograph for interstitial findings (86% vs 29%, respec
142 d cardiothoracic radiologists examined chest radiographs for opacities and assigned a clinically vali
143 the distal fibula are rare in children with radiograph fracture-negative lateral ankle injuries.
144 ve study, 22 960 de-identified frontal chest radiographs from 11 153 patients (average age, 60.2 year
147 tecting TB-associated abnormalities in chest radiographs from outpatients in Nepal and Cameroon.
148 on weight-bearing anterior-posterior pelvic radiographs from participants in the Osteoarthritis Init
150 ent with necrotising enterocolitis and whose radiographs fulfilled criteria for Bell's stage 2 or 3 n
152 ny WHO danger sign or consolidation on chest radiograph had an NPV of 96.8% for adverse pneumonia out
154 omated deep-learning approach based on chest radiograph images may identify more smokers at high risk
155 udy visit in participants for whom evaluable radiograph images were available at baseline and at leas
156 aortic valve location on plain supine chest radiograph images, which can be used to evaluate intraca
159 ociated with alveolar consolidation on chest radiograph in nonconfirmed cases, and with high (>6.9 lo
161 and Methods A total of 103 489 frontal chest radiographs in 46 712 patients acquired from January 1,
162 sampled test data set composed of 500 chest radiographs in 500 patients was evaluated by the CV19-Ne
164 nced high-tech imaging, the utility of plain radiographs in conditions of the bone is increasingly be
165 del for risk of OA progression by using knee radiographs in patients who underwent total knee replace
166 was trained, validated, and tested on chest radiographs in patients with and without COVID-19 pneumo
168 (CAD4COVID-XRay) was trained on 24 678 chest radiographs, including 1540 used only for validation whi
169 and evaluate deep learning models for chest radiograph interpretation by using radiologist-adjudicat
171 pose To investigate the development of chest radiograph interpretation skill through medical training
172 pects such as antibiotic pretreatment, chest radiograph interpretation, utility of induced sputum in
173 that can reliably predict disease, while 2D radiographs interpreted by human observers are still the
175 can be substantial delays between the time a radiograph is obtained and when it is interpreted by a r
177 rning model trained on pediatric trauma hand radiographs is on par with automated and manual GP-based
179 viewers for detecting abnormalities on chest radiographs (kappa = 0.99; 95% confidence interval: 0.97
180 eatures of congestive heart failure on chest radiographs learned by neural networks can be identified
181 this retrospective study, bilateral long-leg radiographs (LLRs) from 255 patients that were obtained
182 ods are used - dental radiographs, panoramic radiographs, magnetic resonance imaging with diffusion-w
184 Results A total of 2060 patients (5806 chest radiographs; mean age, 62 years +/- 16 [standard deviati
185 D-19 pneumonia and 3148 patients (5300 chest radiographs; mean age, 64 years +/- 18; 1578 men) with n
186 severity of lung disease on admission chest radiographs, measured by using the modified Radiographic
187 e (AI) algorithm to detect COVID-19 on chest radiographs might be useful for triage or infection cont
188 ms were fever (49%) and cough (39%); initial radiographs most commonly showed multifocal or bilateral
189 sted of a set of continuously acquired chest radiographs (n = 454) obtained in patients suspected of
190 1.27] per cycle threshold [CT]), and a chest radiograph not suggestive of active tuberculosis (aOR, 0
193 d to lower lung zone distribution on a chest radiograph obtained in the setting of pandemic COVID-19
194 tegrating detector CT and a single localizer radiograph obtained with photon-counting detector CT.
196 a retrospective study, 216 431 frontal chest radiographs obtained between 1998 and 2012 were procured
197 on 15 129 frontal view pediatric trauma hand radiographs obtained between December 14, 2009, and May
201 ision of BMD measurement using two localizer radiographs obtained with energy-integrating detector CT
203 r distance was measured on the mammogram and radiograph of the specimen, and reflector depth was meas
204 ds, which their curves were derived from the radiographs of 129 sagittal spinal curves of adolescents
205 eep-learning model trained to map projection radiographs of a patient to the corresponding 3D anatomy
208 roved-study, a total of 1830 posteroanterior radiographs of patients with AIS (age range, 10-18 years
216 s with wrist trauma and negative findings on radiographs often undergo additional MRI examinations to
218 automated real-time triaging of adult chest radiographs on the basis of the urgency of imaging appea
219 crobial use (P = 0.032), and number of chest radiographs (P = 0.005), when controlling for potential
220 following imaging methods are used - dental radiographs, panoramic radiographs, magnetic resonance i
224 eved by additionally rating the supine chest radiograph reading score 1 as positive for pneumonia and
225 0.93) when considering only the supine chest radiograph reading score 2 as positive for pneumonia.
226 come a standard of care, postinsertion chest radiograph remains the gold standard to confirm central
228 thicknesses were extracted directly from the radiographs, representing a greatly enhanced scope of da
229 both pulmonary ultrasound and portable chest radiograph respectively (right lung: 92.5% vs 65.7%; p <
230 near-normal MRI of the spine, in whom plain radiographs revealed subtle findings and aided in making
232 ween pulmonary ultrasound and portable chest radiograph (right: 99% vs 87%; p = 0.009 and left: 99% v
234 Among patients who were admitted, a chest radiograph score of 3 or more was an independent predict
236 ll foci suspicious of lytic lesions on skull radiographs, seen as arachnoid granulations fovea in CT.
237 hospital admission (n = 145, 43%) were chest radiograph severity score of 2 or more (odds ratio, 6.2;
239 senting to the emergency department, a chest radiograph severity score was predictive of risk for hos
240 Cs): 0.80 (95% CI: 0.73, 0.88) for the chest radiograph severity score, 0.76 (95% CI: 0.68, 0.84) for
241 e To analyze the prognostic value of a chest radiograph severity scoring system for younger (nonelder
242 uted tomography of L4 vertebrae and skeletal radiographs showed delayed skeletal development and sugg
244 cycle-GAN's texture translation (fake chest radiographs), showed decreased intermanufacturer RF vari
245 ortion of implant, and subsequent periapical radiographs taken demonstrated a radiolucent lesion.
246 ll, many had residual abnormalities on chest radiographs (ten [67%] of 15) and pulmonary function tes
247 igher severity of disease on admission chest radiographs than White or non-Hispanic patients, and inc
248 ing AI algorithm to detect COVID-19 on chest radiographs, that was trained and tested on a large clin
250 the senior radiologist (V.M.C.) reviewed the radiographs, the patient was called back for assessment
252 deep CNNs was then trained by using labeled radiographs to predict the clinical priority from radiol
253 a convolutional neural network (trauma hand radiograph-trained deep learning bone age assessment met
257 y-integrating detector CT, and one localizer radiograph was obtained with photon-counting detector CT
259 tection of coronavirus disease 2019 on chest radiographs was comparable with that of six independent
260 a from the OA Initiative, a DL model on knee radiographs was developed to predict both the likelihood
262 rcentage IBD depth reduction, assessed using radiographs, was evaluated at baseline and postoperative
271 ized procedure notes and postprocedure chest radiographs were extracted and individually reviewed to
286 and lung ultrasound is noninferior to chest radiograph when used to accurately assess central venous
287 onary ultrasound protocol and portable chest radiograph with chest CT for localization of pathology t
288 tegrating detector CT and a single localizer radiograph with different energy thresholds from photon-
290 which included all conventional screen-film radiographs with a classification by at least one A Read
291 = 0.38; T1weighted: R(2) = 0.18) compared to radiographs with a higher accuracy than conventional MR
292 , detected coronavirus disease 2019 on chest radiographs with a performance similar to that of experi
293 proficient in differentiating between chest radiographs with and without symptoms of pneumonia but h
294 25 mm of reproducible sensor displacement on radiographs with as little as 100 N of axial compressive
296 sion A Readers classified substantially more radiographs with evidence of pneumoconiosis and classifi
297 hold the potential to assist in prioritizing radiographs with potentially malpositioned catheters for
298 ning bone age assessment model based on hand radiographs with that of expert radiologists and that of
299 Automated real-time triaging of adult chest radiographs with use of an artificial intelligence syste
300 eveloped to detect COVID-19 on frontal chest radiographs, with reverse-transcription polymerase chain