128 results on '"Pickhardt PJ"'
Search Results
2. Colorectal cancer: CT colonography and colonoscopy for detection--systematic review and meta-analysis
- Author
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Pickhardt, Pj, Hassan, Cesare, Halligan, S, Marmo, R., Pickhardt, Pj, Hassan, Cesare, Halligan, S, and Marmo, R.
- Abstract
To perform a systematic review and meta-analysis of published studies assessing the sensitivity of both computed tomographic (CT) colonography and optical colonoscopy (OC) for colorectal cancer detection.
- Published
- 2011
3. Left-sided polyps detected at screening CT colonography: do we need complete optical colonoscopy for further evaluation?
- Author
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Pickhardt, Pj, Durick, Na, Pooler, Bd, Hassan, Cesare, Pickhardt, Pj, Durick, Na, Pooler, Bd, and Hassan, Cesare
- Abstract
To estimate the relative yield of therapeutic flexible sigmoidoscopy compared with complete optical colonoscopy for isolated left-sided polyps (≥6 mm in diameter) identified at screening computed tomographic (CT) colonography.
- Published
- 2011
4. Systematic review: distribution of advanced neoplasia according to polyp size at screening colonoscopy
- Author
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Hassan, Cesare, Pickhardt, Pj, Kim, Dh, Di Giulio, E, Zullo, A, Laghi, A, Repici, A, Iafrate, F, Osborn, J, Annibale, B., Hassan, Cesare, Pickhardt, Pj, Kim, Dh, Di Giulio, E, Zullo, A, Laghi, A, Repici, A, Iafrate, F, Osborn, J, and Annibale, B.
- Abstract
The impact of not referring sub-centimetre polyps identified at CT colonography upon the efficacy of colorectal cancer screening remains uncertain.
- Published
- 2010
5. Should we refer diminutive polyps to post-CTC polypectomy?
- Author
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Hassan, Cesare, Pickhardt, Pj, Laghi, A, Kim, Dh, Zullo, A., Hassan, Cesare, Pickhardt, Pj, Laghi, A, Kim, Dh, and Zullo, A.
- Abstract
N/A
- Published
- 2010
6. Impact of lifestyle factors on colorectal polyp detection in the screening setting
- Author
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Hassan, Cesare, Pickhardt, Pj, Marmo, R, Choi, Jr, Hassan, Cesare, Pickhardt, Pj, Marmo, R, and Choi, Jr
- Abstract
Awareness of risk factors for colorectal neoplasia could address risk reduction strategies in asymptomatic subjects.
- Published
- 2010
7. A resect and discard strategy would improve cost-effectiveness of colorectal cancer screening
- Author
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Hassan, Cesare, Pickhardt, Pj, Rex, Dk, Hassan, Cesare, Pickhardt, Pj, and Rex, Dk
- Abstract
A "resect and discard" policy has been proposed for diminutive polyps detected by screening colonoscopy, because hyperplastic and adenomatous polyps can be distinguished, in vivo, by using narrow-band imaging (NBI). We modeled the cost-effectiveness of this policy.
- Published
- 2010
8. Value-of-information analysis to guide future research in the management of the colorectal malignant polyp
- Author
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Hassan, Cesare, Pickhardt, Pj, Di Giulio, E, Hunink, Mgm, Zullo, A, Nardelli, Bb, Hassan, Cesare, Pickhardt, Pj, Di Giulio, E, Hunink, Mgm, Zullo, A, and Nardelli, Bb
- Abstract
The efficacy of surgery in the postendoscopic management of low-risk malignant polyps is unclear. Although interobserver variability in the histological diagnosis was shown, its importance is unknown. The purpose of this study was to guide future research on the optimal strategy for low-risk polyps with the use of value-of-information analysis.
- Published
- 2010
9. Re: Cost-effectiveness of computed tomographic colonography screening for colorectal cancer in the Medicare population
- Author
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Pickhardt, Pj, Kim, Dh, Hassan, Cesare, Pickhardt, Pj, Kim, Dh, and Hassan, Cesare
- Abstract
N/A
- Published
- 2010
10. Performance improvements of imaging-based screening tests
- Author
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Hassan, Cesare, Pickhardt, Pj, Rex, Dk, Hassan, Cesare, Pickhardt, Pj, and Rex, Dk
- Abstract
Endoscopic and radiologic tests appear to be more accurate than stool-tests in detecting advanced neoplasia because of direct visualisation of colorectal mucosa. Further technological advances are expected to improve the performance and acceptability of these tests. Several attempts at increasing the adenoma detection rate of colonoscopy have been tested, and in vivo histologic differentiation between neoplastic and hyperplastic polyps may lead to substantial saving in economic and medical resources. Low-volume and non-cathartic bowel preparations may improve CT colonography acceptability, whilst computer-aided detection and low-dose protocols may result in a higher accuracy and safety of this procedure. Despite the lack of ionising radiation, significant drawbacks will likely to limit the role of MR colonography in screening programs. Colon capsule endoscopy appears to be a safe and technically feasible procedure. The suboptimal accuracy of the first generation seems to be substantially improved by the second generation of this device.
- Published
- 2010
11. Portrait of a polyp: the CTC dilemma
- Author
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Iafrate, F, Hassan, Cesare, Pickhardt, Pj, Pichi, A, Stagnitti, A, Zullo, A, Di Giulio, E, Laghi, A., Iafrate, F, Hassan, Cesare, Pickhardt, Pj, Pichi, A, Stagnitti, A, Zullo, A, Di Giulio, E, and Laghi, A.
- Abstract
N/A
- Published
- 2010
12. Low rates of cancer or high-grade dysplasia in colorectal polyps collected from computed tomography colonography screening
- Author
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Pickhardt, Pj, Hain, K, Kim, Dh, Hassan, Cesare, Pickhardt, Pj, Hain, K, Kim, Dh, and Hassan, Cesare
- Abstract
In patients with polyps detected at computed tomography colonography (CTC) screening, management decisions are influenced by the likelihood of important polyp histology. We assess the rates of cancer and high-grade dysplasia among patients found to have small (6-9 mm) and large (>or=10 mm) colorectal polyps at CTC.
- Published
- 2010
13. The effectiveness of colonoscopy in reducing mortality from colorectal cancer
- Author
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Pickhardt, Pj, Kim, Dh, Hassan, Cesare, Pickhardt, Pj, Kim, Dh, and Hassan, Cesare
- Abstract
N/A
- Published
- 2009
14. Cost-effectiveness of early colonoscopy surveillance after cancer resection
- Author
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Hassan, Cesare, Pickhardt, Pj, Zullo, A, Di Giulio, E, Laghi, A, Kim, Dh, Iafrate, F., Hassan, Cesare, Pickhardt, Pj, Zullo, A, Di Giulio, E, Laghi, A, Kim, Dh, and Iafrate, F.
- Abstract
Short-interval surveillance colonoscopy at 1 year has been recently recommended following curative-intent surgery for colorectal cancer. However, the efficacy and cost-effectiveness of this endoscopic strategy is largely unknown.
- Published
- 2009
15. Cost-effectiveness of early one-year colonoscopy surveillance after polypectomy
- Author
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Hassan, Cesare, Pickhardt, Pj, Di Giulio, E, Kim, Dh, Zullo, A, Morini, S., Hassan, Cesare, Pickhardt, Pj, Di Giulio, E, Kim, Dh, Zullo, A, and Morini, S.
- Abstract
Some colorectal cancers have been unexpectedly diagnosed within one year after polypectomy in high-quality trials. The purpose of this study was to assess the clinical and economic impact of early surveillance colonoscopy one year after polypectomy in relation to detection of colorectal cancer.
- Published
- 2009
16. Value-of-information analysis to guide future research in colorectal cancer screening
- Author
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Hassan, Cesare, Hunink, Mgm, Laghi, A, Pickhardt, Pj, Zullo, A, Kim, Dh, Iafrate, F, Di Giulio, E., Hassan, Cesare, Hunink, Mgm, Laghi, A, Pickhardt, Pj, Zullo, A, Kim, Dh, Iafrate, F, and Di Giulio, E.
- Abstract
To identify the most useful areas for research in colorectal cancer (CRC) screening by using a value-of-information analysis.
- Published
- 2009
17. Impact of computer-aided detection on the cost-effectiveness of CT colonography
- Author
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Regge, D, Hassan, Cesare, Pickhardt, Pj, Laghi, A, Zullo, A, Kim, Dh, Iafrate, F, Morini, S., Regge, D, Hassan, Cesare, Pickhardt, Pj, Laghi, A, Zullo, A, Kim, Dh, Iafrate, F, and Morini, S.
- Abstract
To analyze the cost-effectiveness of adding computer-aided detection (CAD) to a computed tomographic (CT) colonography screening program and to compare it with other options of colorectal cancer (CRC) prevention.
- Published
- 2009
18. The diminutive lesion versus the advanced adenoma: Which is the real target of CT colonography screening?
- Author
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Hassan, Cesare, Pickhardt, Pj, Laghi, A, Zullo, A, Kim, Dh, Iafrate, F, Cristofari, F, Di Giulio, E., Hassan, Cesare, Pickhardt, Pj, Laghi, A, Zullo, A, Kim, Dh, Iafrate, F, Cristofari, F, and Di Giulio, E.
- Abstract
N/A
- Published
- 2009
19. Impact of whole-body CT screening on the cost-effectiveness of CT colonography
- Author
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Hassan, Cesare, Pickhardt, Pj, Laghi, A, Zullo, A, Kim, Dh, Iafrate, F, Di Giulio, L, Morini, S., Hassan, Cesare, Pickhardt, Pj, Laghi, A, Zullo, A, Kim, Dh, Iafrate, F, Di Giulio, L, and Morini, S.
- Abstract
To analyze the impact of adding computed tomographic (CT) imaging of the chest on the clinical effectiveness and cost-effectiveness of CT colonography to determine whether performing CT colonography and whole-body CT is a more clinically and cost-effective strategy than CT colonography alone when screening average-risk subjects.
- Published
- 2009
20. Cost-effectiveness of upper gastrointestinal endoscopy according to the appropriateness of the indication
- Author
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Di Giulio, E, Hassan, Cesare, Pickhardt, Pj, Zullo, A, Laghi, A, Kim, Dh, Iafrate, F., Di Giulio, E, Hassan, Cesare, Pickhardt, Pj, Zullo, A, Laghi, A, Kim, Dh, and Iafrate, F.
- Abstract
Application of appropriate indications for upper endoscopy (EGD) should conserve limited endoscopic resources. The cost-effectiveness of current guidelines for the detection of gastro-oesophageal cancer is unknown. The aim of this study was to assess the clinical and economic impact of ASGE and EPAGE guidelines in selecting patients referred for upper endoscopy relative to the detection of gastro-oesophageal cancer.
- Published
- 2009
21. Advanced neoplasia detection rates at colonoscopy screening: implications for CT colonography
- Author
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Pickhardt, Pj, Kim, Dh, Hassan, Cesare, Pickhardt, Pj, Kim, Dh, and Hassan, Cesare
- Abstract
N/A
- Published
- 2009
22. CT colonography to screen for colorectal cancer and aortic aneurysm in the Medicare population: cost-effectiveness analysis
- Author
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Pickhardt, Pj, Hassan, Cesare, Laghi, A, Kim, Dh, Pickhardt, Pj, Hassan, Cesare, Laghi, A, and Kim, Dh
- Abstract
CT colonography (CTC) is a recommended test for colorectal cancer (CRC) screening according to the updated 2008 American Cancer Society guidelines. CTC can also accurately detect abdominal aortic aneurysm (AAA). This collaborative gastroenterology-radiology project evaluated the cost-effectiveness and clinical efficacy of CTC in the Medicare population.
- Published
- 2009
23. Clinical management of small (6- to 9-mm) polyps detected at screening CT colonography: a cost-effectiveness analysis
- Author
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Pickhardt, Pj, Hassan, Cesare, Laghi, A, Zullo, A, Kim, Dh, Iafrate, F, Morini, S., Pickhardt, Pj, Hassan, Cesare, Laghi, A, Zullo, A, Kim, Dh, Iafrate, F, and Morini, S.
- Abstract
The primary aim of this model analysis was to compare the clinical and economic impacts of immediate polypectomy versus 3-year CT colonography (CTC) surveillance for small (6- to 9-mm) polyps detected at CTC screening.
- Published
- 2008
24. Cost effectiveness of colonoscopy, based on the appropriateness of an indication
- Author
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Hassan, Cesare, Di Giulio, E, Pickhardt, Pj, Zullo, A, Laghi, A, Kim, Dh, Iafrate, F, Morini, S., Hassan, Cesare, Di Giulio, E, Pickhardt, Pj, Zullo, A, Laghi, A, Kim, Dh, Iafrate, F, and Morini, S.
- Abstract
Determination of the appropriateness of an indication for colonoscopy has been advanced as a means to help rationalize the use of endoscopic resources. However, the efficacy and cost effectiveness of the current guidelines used to select patients for colonoscopy are largely unknown. The goal of this study was to assess the clinical and economic impact of American Society for Gastrointestinal Endoscopy and the European Panel on the appropriateness of Gastrointestinal Endoscopy appropriateness guidelines in selecting patients who are referred for colonoscopy, in relation to colorectal cancer (CRC) detection.
- Published
- 2008
25. Computed tomographic colonography to screen for colorectal cancer, extracolonic cancer, and aortic aneurysm: model simulation with cost-effectiveness analysis
- Author
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Hassan, Cesare, Pickhardt, Pj, Pickhardt, P, Laghi, A, Kim, Dh, Kim, D, Zullo, A, Iafrate, F, Di Giulio, L, Morini, S., Hassan, Cesare, Pickhardt, Pj, Pickhardt, P, Laghi, A, Kim, Dh, Kim, D, Zullo, A, Iafrate, F, Di Giulio, L, and Morini, S.
- Abstract
In addition to detecting colorectal neoplasia, abdominal computed tomography (CT) with colonography technique (CTC) can also detect unsuspected extracolonic cancers and abdominal aortic aneurysms (AAA).The efficacy and cost-effectiveness of this combined abdominal CT screening strategy are unknown.
- Published
- 2008
26. Small and diminutive polyps detected at screening CT colonography: a decision analysis for referral to colonoscopy
- Author
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Pickhardt, Pj, Hassan, Cesare, Laghi, A, Zullo, A, Kim, Dh, Iafrate, F, Morini, S., Pickhardt, Pj, Hassan, Cesare, Laghi, A, Zullo, A, Kim, Dh, Iafrate, F, and Morini, S.
- Abstract
The objective of this study was to assess the clinical and economic impact of colonoscopic referral for small and diminutive polyps detected at CT colonography (CTC) screening.
- Published
- 2008
27. Projected impact of colorectal cancer screening with computerized tomographic colonography on current radiological capacity in Europe
- Author
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Hassan, Cesare, Laghi, A, Pickhardt, Pj, Kim, Dh, Zullo, A, Iafrate, F, Morini, S., Hassan, Cesare, Laghi, A, Pickhardt, Pj, Kim, Dh, Zullo, A, Iafrate, F, and Morini, S.
- Abstract
The impact of a primary colorectal cancer screening with computerized tomographic colonography on current radiological capacity is unknown. The multispecialty needs for computerized tomographic examinations raise some doubts on the feasibility of a mass colorectal cancer screening with computerized tomographic colonography.
- Published
- 2008
28. Is there sufficient MDCT capacity to provide colorectal cancer screening with CT colonography for the U.S. population?
- Author
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Pickhardt, Pj, Hassan, Cesare, Laghi, A, Kim, Dh, Zullo, A, Iafrate, F, Morini, S., Pickhardt, Pj, Hassan, Cesare, Laghi, A, Kim, Dh, Zullo, A, Iafrate, F, and Morini, S.
- Abstract
The impact of introducing widespread colorectal cancer (CRC) screening with CT colonography (CTC) on current resource capacity is unknown. Although a relatively large number of MDCT scanners are currently in operation throughout the United States, these existing units already perform studies for a wide array of indications. Our aim was to assess the ability of the available MDCT capacity in the United States to provide population screening with CTC.
- Published
- 2008
29. Cost-effectiveness of colorectal cancer screening with computed tomography colonography: the impact of not reporting diminutive lesions
- Author
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Pickhardt, Pj, Hassan, Cesare, Laghi, A, Zullo, A, Kim, Dh, Morini, S., Pickhardt, Pj, Hassan, Cesare, Laghi, A, Zullo, A, Kim, Dh, and Morini, S.
- Abstract
Prior cost-effectiveness models analyzing computed tomography colonography (CTC) screening have assumed that patients with diminutive lesions (
or=6 mm. The purpose of the current study was to assess the potential harms, benefits, and cost-effectiveness of CTC screening without the reporting of diminutive lesions compared with other screening strategies. - Published
- 2007
30. Virlual colonoscopy for screening: accurate, acceptable, but affordable?
- Author
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Pickhardt, PJ., Choi, JR., and Hwang, I.
- Subjects
- *
COLON cancer , *COLONOSCOPY , *TOMOGRAPHY , *BARIUM , *CANCER , *ENDOSCOPY - Abstract
Virtual colonoscopy for colorectal cancer screening sounds attractive: non-invasive, no sedation, and no collection of stool. However, a full bowel preparation is needed and so far its sensitivity and specificity for lesions measuring less than 10 mm diameter have suggested it is not accurate enough to be used for screening. This study involves 1233 average risk asymptomatic adults in three centres who underwent virtual colonoscopy followed by a some day conventional colonoscopy. Multidetector computed tomograph scans were used to generate fast high resolution images, and water soluble and barium contrast materials were used to tag residual fluid and stool.
- Published
- 2004
31. A Comparison of CT-Based Pancreatic Segmentation Deep Learning Models.
- Author
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Suri A, Mukherjee P, Pickhardt PJ, and Summers RM
- Subjects
- Humans, Male, Female, Retrospective Studies, Middle Aged, Pancreatic Diseases diagnostic imaging, Radiographic Image Interpretation, Computer-Assisted methods, Deep Learning, Tomography, X-Ray Computed methods, Pancreas diagnostic imaging
- Abstract
Rationale and Objectives: Pancreas segmentation accuracy at CT is critical for the identification of pancreatic pathologies and is essential for the development of imaging biomarkers. Our objective was to benchmark the performance of five high-performing pancreas segmentation models across multiple metrics stratified by scan and patient/pancreatic characteristics that may affect segmentation performance., Materials and Methods: In this retrospective study, PubMed and ArXiv searches were conducted to identify pancreas segmentation models which were then evaluated on a set of annotated imaging datasets. Results (Dice score, Hausdorff distance [HD], average surface distance [ASD]) were stratified by contrast status and quartiles of peri-pancreatic attenuation (5 mm region around pancreas). Multivariate regression was performed to identify imaging characteristics and biomarkers (n = 9) that were significantly associated with Dice score., Results: Five pancreas segmentation models were identified: Abdomen Atlas [AAUNet, AASwin, trained on 8448 scans], TotalSegmentator [TS, 1204 scans], nnUNetv1 [MSD-nnUNet, 282 scans], and a U-Net based model for predicting diabetes [DM-UNet, 427 scans]. These were evaluated on 352 CT scans (30 females, 25 males, 297 sex unknown; age 58 ± 7 years [ ± 1 SD], 327 age unknown) from 2000-2023. Overall, TS, AAUNet, and AASwin were the best performers, Dice= 80 ± 11%, 79 ± 16%, and 77 ± 18%, respectively (pairwise Sidak test not-significantly different). AASwin and MSD-nnUNet performed worse (for all metrics) on non-contrast scans (vs contrast, P < .001). The worst performer was DM-UNet (Dice=67 ± 16%). All algorithms except TS showed lower Dice scores with increasing peri-pancreatic attenuation (P < .01). Multivariate regression showed non-contrast scans, (P < .001; MSD-nnUNet), smaller pancreatic length (P = .005, MSD-nnUNet), and height (P = .003, DM-UNet) were associated with lower Dice scores., Conclusion: The convolutional neural network-based models trained on a diverse set of scans performed best (TS, AAUnet, and AASwin). TS performed equivalently to AAUnet and AASwin with only 13% of the training set size (8488 vs 1204 scans). Though trained on the same dataset, a transformer network (AASwin) had poorer performance on non-contrast scans whereas its convolutional network counterpart (AAUNet) did not. This study highlights how aggregate assessment metrics of pancreatic segmentation algorithms seen in other literature are not enough to capture differential performance across common patient and scanning characteristics in clinical populations., Competing Interests: Declaration of Competing Interest The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: Abhinav Suri reports financial support was provided by National Institutes of Health and reports a relationship with Springer Nature that includes royalties. Perry Pickhardt reports relationship with General Electric Company that includes consulting or advisory, Bracco Imaging SpA that includes consulting or advisory, Zebra Technologies Corp that includes consulting or advisory, Elucent that includes equity or stocks, SHINE that includes equity or stocks. Ronald Summers reports a relationship with PingAn that includes a collaborative grant, patent royalties and/or software licenses from iCAD, Philips, ScanMed, Philips, ScanMed, PingAn, Massachusetts General Brigham, and Translation Holdings; member of the Academic Radiology, Journal of Medical Imaging, and Radiology: AI Editorial Boards. If there are other authors, they declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (Published by Elsevier Inc.)
- Published
- 2024
- Full Text
- View/download PDF
32. Fully Automated and Explainable Measurement of Liver Surface Nodularity in CT: Utility for Staging Hepatic Fibrosis.
- Author
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Mathai TS, Lubner MG, Pickhardt PJ, and Summers RM
- Abstract
Rationale and Objectives: In the United States, cirrhosis was the 12th leading cause of death in 2016. Despite end-stage cirrhosis being irreversible, earlier stages of hepatic fibrosis can be reversed via early diagnosis and intervention. The objective is to investigate the utility of a fully automated technique to measure liver surface nodularity (LSN) for staging hepatic fibrosis (stages F0-F4)., Materials and Methods: In this retrospective study, a dataset consisting of patients with multiple etiologies of liver disease collected at Institution-A (METAVIR F0-F4, 2000-2016) was used. The LSN was automatically measured in contrast-enhanced CT volumes and compared against scores from a manual tool. Area under the receiver operating characteristics curve (AUC) was used to distinguish between clinically significant fibrosis (≥ F2), advanced fibrosis (≥F3), and end-stage cirrhosis (F4)., Results: The study sample had 480 patients (304 men, 176 women, mean age, 49±9). Automatically derived LSN scores progressively increased with the fibrosis stage: F0 (1.64 [mean]±1.13 [standard deviation]), F1 (2.16±2.39), F2 (2.17±2.55), F3 (2.23±2.52), and F4 (4.21±2.94). For discriminating significant fibrosis (≥F2), advanced fibrosis (≥F3), and cirrhosis (F4), the automated tool achieved ROC AUCs of 73.9%, 82.5%, and 87.8% respectively. The sensitivity and specificity for significant fibrosis (nodularity threshold 1.51) was 85.2% and 73.3%, advanced fibrosis (nodularity threshold 1.73) was 84.2% and 79.5%, and cirrhosis (nodularity threshold 2.18) was 86.5% and 79.5%. Statistical tests revealed that the automated LSN scores distinguished patients with advanced fibrosis (p<.001) and cirrhosis (p<.001)., Conclusion: The fully automated LSN measurement retained its predictive power for distinguishing between advanced fibrosis and cirrhosis. The clinical impact is that the fully automated LSN measurement may be useful for early interventions and population-based studies. It can automatically predict the fibrosis stage in ∼45 s in comparison to the ∼2 min needed to manually measure the LSN in a CT volume., Competing Interests: Declaration of Competing Interest The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: Perry J Pickhardt reports a relationship with Bracco that includes: consulting or advisory. Perry J Pickhardt reports a relationship with Nanox that includes: consulting or advisory. Perry J Pickhardt reports a relationship with GE Healthcare that includes: consulting or advisory. Ronald M. Summers reports a relationship with iCAD that includes: consulting or advisory and funding grants. Ronald M. Summers reports a relationship with Philips that includes: consulting or advisory and funding grants. Ronald M. Summers reports a relationship with ScanMed that includes: consulting or advisory and funding grants. Ronald M. Summers reports a relationship with PingAn that includes: consulting or advisory and funding grants. Ronald M. Summers reports a relationship with Translation Holdings that includes: consulting or advisory and funding grants. Ronald M. Summers reports a relationship with MGB that includes: consulting or advisory and funding grants. R.M.S is a member of the editorial board at Radiology: AI If there are other authors, they declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (Published by Elsevier Inc.)
- Published
- 2024
- Full Text
- View/download PDF
33. Correlation of HbA1c levels with CT-based body composition biomarkers in diabetes mellitus and metabolic syndrome.
- Author
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Warner JD, Blake GM, Garrett JW, Lee MH, Nelson LW, Summers RM, and Pickhardt PJ
- Subjects
- Humans, Female, Male, Middle Aged, Aged, Diabetes Mellitus metabolism, Diabetes Mellitus diagnostic imaging, Adult, Retrospective Studies, Intra-Abdominal Fat diagnostic imaging, Intra-Abdominal Fat metabolism, Metabolic Syndrome metabolism, Metabolic Syndrome diagnostic imaging, Glycated Hemoglobin metabolism, Glycated Hemoglobin analysis, Tomography, X-Ray Computed methods, Body Composition, Biomarkers blood
- Abstract
Diabetes mellitus and metabolic syndrome are closely linked with visceral body composition, but clinical assessment is limited to external measurements and laboratory values including hemoglobin A1c (HbA1c). Modern deep learning and AI algorithms allow automated extraction of biomarkers for organ size, density, and body composition from routine computed tomography (CT) exams. Comparing visceral CT biomarkers across groups with differing glycemic control revealed significant, progressive CT biomarker changes with increasing HbA1c. For example, in the unenhanced female cohort, mean changes between normal and poorly-controlled diabetes showed: 53% increase in visceral adipose tissue area, 22% increase in kidney volume, 24% increase in liver volume, 6% decrease in liver density (hepatic steatosis), 16% increase in skeletal muscle area, and 21% decrease in skeletal muscle density (myosteatosis) (all p < 0.001). The multisystem changes of metabolic syndrome can be objectively and retrospectively measured using automated CT biomarkers, with implications for diabetes, metabolic syndrome, and GLP-1 agonists., (© 2024. The Author(s).)
- Published
- 2024
- Full Text
- View/download PDF
34. Deep Learning Segmentation of Ascites on Abdominal CT Scans for Automatic Volume Quantification.
- Author
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Hou B, Lee S, Lee JM, Koh C, Xiao J, Pickhardt PJ, and Summers RM
- Subjects
- Humans, Female, Middle Aged, Retrospective Studies, Aged, Male, Radiographic Image Interpretation, Computer-Assisted methods, Deep Learning, Ascites diagnostic imaging, Tomography, X-Ray Computed methods, Ovarian Neoplasms diagnostic imaging, Ovarian Neoplasms complications, Liver Cirrhosis diagnostic imaging, Liver Cirrhosis complications
- Abstract
Purpose To evaluate the performance of an automated deep learning method in detecting ascites and subsequently quantifying its volume in patients with liver cirrhosis and patients with ovarian cancer. Materials and Methods This retrospective study included contrast-enhanced and noncontrast abdominal-pelvic CT scans of patients with cirrhotic ascites and patients with ovarian cancer from two institutions, National Institutes of Health (NIH) and University of Wisconsin (UofW). The model, trained on The Cancer Genome Atlas Ovarian Cancer dataset (mean age [±SD], 60 years ± 11; 143 female), was tested on two internal datasets (NIH-LC and NIH-OV) and one external dataset (UofW-LC). Its performance was measured by the F1/Dice coefficient, SDs, and 95% CIs, focusing on ascites volume in the peritoneal cavity. Results On NIH-LC (25 patients; mean age, 59 years ± 14; 14 male) and NIH-OV (166 patients; mean age, 65 years ± 9; all female), the model achieved F1/Dice scores of 85.5% ± 6.1 (95% CI: 83.1, 87.8) and 82.6% ± 15.3 (95% CI: 76.4, 88.7), with median volume estimation errors of 19.6% (IQR, 13.2%-29.0%) and 5.3% (IQR: 2.4%-9.7%), respectively. On UofW-LC (124 patients; mean age, 46 years ± 12; 73 female), the model had a F1/Dice score of 83.0% ± 10.7 (95% CI: 79.8, 86.3) and median volume estimation error of 9.7% (IQR, 4.5%-15.1%). The model showed strong agreement with expert assessments, with r
2 values of 0.79, 0.98, and 0.97 across the test sets. Conclusion The proposed deep learning method performed well in segmenting and quantifying the volume of ascites in patients with cirrhosis and those with ovarian cancer, in concordance with expert radiologist assessments. Keywords: Abdomen/GI, Cirrhosis, Deep Learning, Segmentation Supplemental material is available for this article . © RSNA, 2024 See also commentary by Aisen and Rodrigues in this issue.- Published
- 2024
- Full Text
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35. Lesion Classification by Model-Based Feature Extraction: A Differential Affine Invariant Model of Soft Tissue Elasticity in CT Images.
- Author
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Cao W, Pomeroy MJ, Liang Z, Gao Y, Shi Y, Tan J, Han F, Wang J, Ma J, Lu H, Abbasi AF, and Pickhardt PJ
- Abstract
The elasticity of soft tissues has been widely considered a characteristic property for differentiation of healthy and lesions and, therefore, motivated the development of several elasticity imaging modalities, for example, ultrasound elastography, magnetic resonance elastography, and optical coherence elastography to directly measure the tissue elasticity. This paper proposes an alternative approach of modeling the elasticity for prior knowledge-based extraction of tissue elastic characteristic features for machine learning (ML) lesion classification using computed tomography (CT) imaging modality. The model describes a dynamic non-rigid (or elastic) soft tissue deformation in differential manifold to mimic the tissues' elasticity under wave fluctuation in vivo. Based on the model, a local deformation invariant is formulated using the 1
st and 2nd order derivatives of the lesion volumetric CT image and used to generate elastic feature map of the lesion volume. From the feature map, tissue elastic features are extracted and fed to ML to perform lesion classification. Two pathologically proven image datasets of colon polyps and lung nodules were used to test the modeling strategy. The outcomes reached the score of area under the curve of receiver operating characteristics of 94.2% for the polyps and 87.4% for the nodules, resulting in an average gain of 5 to 20% over several existing state-of-the-art image feature-based lesion classification methods. The gain demonstrates the importance of extracting tissue characteristic features for lesion classification, instead of extracting image features, which can include various image artifacts and may vary for different protocols in image acquisition and different imaging modalities., (© 2024. The Author(s) under exclusive licence to Society for Imaging Informatics in Medicine.)- Published
- 2024
- Full Text
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36. Author Correction: Opportunistic detection of type 2 diabetes using deep learning from frontal chest radiographs.
- Author
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Pyrros A, Borstelmann SM, Mantravadi R, Zaiman Z, Thomas K, Price B, Greenstein E, Siddiqui N, Willis M, Shulhan I, Hines-Shah J, Horowitz JM, Nikolaidis P, Lungren MP, Rodríguez-Fernández JM, Gichoya JW, Koyejo S, Flanders AE, Khandwala N, Gupta A, Garrett JW, Cohen JP, Layden BT, Pickhardt PJ, and Galanter W
- Published
- 2024
- Full Text
- View/download PDF
37. Abdominal CT-Based Body Composition Biomarkers for Phenotypic Biologic Aging.
- Author
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Pickhardt PJ
- Subjects
- Humans, Male, Aged, Female, Phenotype, Middle Aged, Body Composition, Aging physiology, Biomarkers, Tomography, X-Ray Computed methods
- Published
- 2024
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38. Multicenter Evaluation of a Weakly Supervised Deep Learning Model for Lymph Node Diagnosis in Rectal Cancer at MRI.
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Xia W, Li D, He W, Pickhardt PJ, Jian J, Zhang R, Zhang J, Song R, Tong T, Yang X, Gao X, and Cui Y
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- Humans, Male, Middle Aged, Retrospective Studies, Magnetic Resonance Imaging methods, Lymph Nodes diagnostic imaging, Deep Learning, Rectal Neoplasms diagnostic imaging
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Purpose To develop a Weakly supervISed model DevelOpment fraMework (WISDOM) model to construct a lymph node (LN) diagnosis model for patients with rectal cancer (RC) that uses preoperative MRI data coupled with postoperative patient-level pathologic information. Materials and Methods In this retrospective study, the WISDOM model was built using MRI (T2-weighted and diffusion-weighted imaging) and patient-level pathologic information (the number of postoperatively confirmed metastatic LNs and resected LNs) based on the data of patients with RC between January 2016 and November 2017. The incremental value of the model in assisting radiologists was investigated. The performances in binary and ternary N staging were evaluated using area under the receiver operating characteristic curve (AUC) and the concordance index (C index), respectively. Results A total of 1014 patients (median age, 62 years; IQR, 54-68 years; 590 male) were analyzed, including the training cohort ( n = 589) and internal test cohort ( n = 146) from center 1 and two external test cohorts (cohort 1: 117; cohort 2: 162) from centers 2 and 3. The WISDOM model yielded an overall AUC of 0.81 and C index of 0.765, significantly outperforming junior radiologists (AUC = 0.69, P < .001; C index = 0.689, P < .001) and performing comparably with senior radiologists (AUC = 0.79, P = .21; C index = 0.788, P = .22). Moreover, the model significantly improved the performance of junior radiologists (AUC = 0.80, P < .001; C index = 0.798, P < .001) and senior radiologists (AUC = 0.88, P < .001; C index = 0.869, P < .001). Conclusion This study demonstrates the potential of WISDOM as a useful LN diagnosis method using routine rectal MRI data. The improved radiologist performance observed with model assistance highlights the potential clinical utility of WISDOM in practice. Keywords: MR Imaging, Abdomen/GI, Rectum, Computer Applications-Detection/Diagnosis Supplemental material is available for this article . Published under a CC BY 4.0 license.
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- 2024
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39. Opportunistic detection of type 2 diabetes using deep learning from frontal chest radiographs.
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Pyrros A, Borstelmann SM, Mantravadi R, Zaiman Z, Thomas K, Price B, Greenstein E, Siddiqui N, Willis M, Shulhan I, Hines-Shah J, Horowitz JM, Nikolaidis P, Lungren MP, Rodríguez-Fernández JM, Gichoya JW, Koyejo S, Flanders AE, Khandwala N, Gupta A, Garrett JW, Cohen JP, Layden BT, Pickhardt PJ, and Galanter W
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- Humans, Radiography, Thoracic methods, Prospective Studies, Radiography, Diabetes Mellitus, Type 2 diagnostic imaging, Deep Learning
- Abstract
Deep learning (DL) models can harness electronic health records (EHRs) to predict diseases and extract radiologic findings for diagnosis. With ambulatory chest radiographs (CXRs) frequently ordered, we investigated detecting type 2 diabetes (T2D) by combining radiographic and EHR data using a DL model. Our model, developed from 271,065 CXRs and 160,244 patients, was tested on a prospective dataset of 9,943 CXRs. Here we show the model effectively detected T2D with a ROC AUC of 0.84 and a 16% prevalence. The algorithm flagged 1,381 cases (14%) as suspicious for T2D. External validation at a distinct institution yielded a ROC AUC of 0.77, with 5% of patients subsequently diagnosed with T2D. Explainable AI techniques revealed correlations between specific adiposity measures and high predictivity, suggesting CXRs' potential for enhanced T2D screening., (© 2023. The Author(s).)
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- 2023
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40. Opportunistic Screening: Radiology Scientific Expert Panel.
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Pickhardt PJ, Summers RM, Garrett JW, Krishnaraj A, Agarwal S, Dreyer KJ, and Nicola GN
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- Humans, Algorithms, Radiologists, Mass Screening methods, Artificial Intelligence, Radiology methods
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Radiologic tests often contain rich imaging data not relevant to the clinical indication. Opportunistic screening refers to the practice of systematically leveraging these incidental imaging findings. Although opportunistic screening can apply to imaging modalities such as conventional radiography, US, and MRI, most attention to date has focused on body CT by using artificial intelligence (AI)-assisted methods. Body CT represents an ideal high-volume modality whereby a quantitative assessment of tissue composition (eg, bone, muscle, fat, and vascular calcium) can provide valuable risk stratification and help detect unsuspected presymptomatic disease. The emergence of "explainable" AI algorithms that fully automate these measurements could eventually lead to their routine clinical use. Potential barriers to widespread implementation of opportunistic CT screening include the need for buy-in from radiologists, referring providers, and patients. Standardization of acquiring and reporting measures is needed, in addition to expanded normative data according to age, sex, and race and ethnicity. Regulatory and reimbursement hurdles are not insurmountable but pose substantial challenges to commercialization and clinical use. Through demonstration of improved population health outcomes and cost-effectiveness, these opportunistic CT-based measures should be attractive to both payers and health care systems as value-based reimbursement models mature. If highly successful, opportunistic screening could eventually justify a practice of standalone "intended" CT screening., (© RSNA, 2023.)
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- 2023
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41. Exploring Dual-Energy CT Spectral Information for Machine Learning-Driven Lesion Diagnosis in Pre-Log Domain.
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Chang S, Gao Y, Pomeroy MJ, Bai T, Zhang H, Lu S, Pickhardt PJ, Gupta A, Reiter MJ, Gould ES, and Liang Z
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- Tomography, X-Ray Computed methods, ROC Curve, Machine Learning, Diagnosis, Computer-Assisted methods, Neural Networks, Computer
- Abstract
In this study, we proposed a computer-aided diagnosis (CADx) framework under dual-energy spectral CT (DECT), which operates directly on the transmission data in the pre-log domain, called CADxDE, to explore the spectral information for lesion diagnosis. The CADxDE includes material identification and machine learning (ML) based CADx. Benefits from DECT's capability of performing virtual monoenergetic imaging with the identified materials, the responses of different tissue types (e.g., muscle, water, and fat) in lesions at each energy can be explored by ML for CADx. Without losing essential factors in the DECT scan, a pre-log domain model-based iterative reconstruction is adopted to obtain decomposed material images, which are then used to generate the virtual monoenergetic images (VMIs) at selected n energies. While these VMIs have the same anatomy, their contrast distribution patterns contain rich information along with the n energies for tissue characterization. Thus, a corresponding ML-based CADx is developed to exploit the energy-enhanced tissue features for differentiating malignant from benign lesions. Specifically, an original image-driven multi-channel three-dimensional convolutional neural network (CNN) and extracted lesion feature-based ML CADx methods are developed to show the feasibility of CADxDE. Results from three pathologically proven clinical datasets showed 4.01% to 14.25% higher AUC (area under the receiver operating characteristic curve) scores than the scores of both the conventional DECT data (high and low energy spectrum separately) and the conventional CT data. The mean gain >9.13% in AUC scores indicated that the energy spectral-enhanced tissue features from CADxDE have great potential to improve lesion diagnosis performance.
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- 2023
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42. AI-based CT Body Composition Identifies Myosteatosis as Key Mortality Predictor in Asymptomatic Adults.
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Nachit M, Horsmans Y, Summers RM, Leclercq IA, and Pickhardt PJ
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- Humans, Male, Adult, Female, Middle Aged, Retrospective Studies, Artificial Intelligence, Body Composition, Obesity pathology, Tomography, X-Ray Computed methods, Muscle, Skeletal pathology, Diabetes Mellitus, Type 2 complications, Cardiovascular Diseases complications, Fatty Liver complications, Sarcopenia complications
- Abstract
Background Body composition data have been limited to adults with disease or older age. The prognostic impact in otherwise asymptomatic adults is unclear. Purpose To use artificial intelligence-based body composition metrics from routine abdominal CT scans in asymptomatic adults to clarify the association between obesity, liver steatosis, myopenia, and myosteatosis and the risk of mortality. Materials and Methods In this retrospective single-center study, consecutive adult outpatients undergoing routine colorectal cancer screening from April 2004 to December 2016 were included. Using a U-Net algorithm, the following body composition metrics were extracted from low-dose, noncontrast, supine multidetector abdominal CT scans: total muscle area, muscle density, subcutaneous and visceral fat area, and volumetric liver density. Abnormal body composition was defined by the presence of liver steatosis, obesity, muscle fatty infiltration (myosteatosis), and/or low muscle mass (myopenia). The incidence of death and major adverse cardiovascular events were recorded during a median follow-up of 8.8 years. Multivariable analyses were performed accounting for age, sex, smoking status, myosteatosis, liver steatosis, myopenia, type 2 diabetes, obesity, visceral fat, and history of cardiovascular events. Results Overall, 8982 consecutive outpatients (mean age, 57 years ± 8 [SD]; 5008 female, 3974 male) were included. Abnormal body composition was found in 86% (434 of 507) of patients who died during follow-up. Myosteatosis was found in 278 of 507 patients (55%) who died (15.5% absolute risk at 10 years). Myosteatosis, obesity, liver steatosis, and myopenia were associated with increased mortality risk (hazard ratio [HR]: 4.33 [95% CI: 3.63, 5.16], 1.27 [95% CI: 1.06, 1.53], 1.86 [95% CI: 1.56, 2.21], and 1.75 [95% CI: 1.43, 2.14], respectively). In 8303 patients (excluding 679 patients without complete data), after multivariable adjustment, myosteatosis remained associated with increased mortality risk (HR, 1.89 [95% CI: 1.52, 2.35]; P < .001). Conclusion Artificial intelligence-based profiling of body composition from routine abdominal CT scans identified myosteatosis as a key predictor of mortality risk in asymptomatic adults. © RSNA, 2023 Supplemental material is available for this article. See also the editorial by Tong and Magudia in this issue.
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- 2023
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43. CT image-based biomarkers acquired by AI-based algorithms for the opportunistic prediction of falls.
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Liu D, Binkley NC, Perez A, Garrett JW, Zea R, Summers RM, and Pickhardt PJ
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Objective: Evaluate whether biomarkers measured by automated artificial intelligence (AI)-based algorithms are suggestive of future fall risk., Methods: In this retrospective age- and sex-matched case-control study, 9029 total patients underwent initial abdominal CT for a variety of indications over a 20-year interval at one institution. 3535 case patients (mean age at initial CT, 66.5 ± 9.6 years; 63.4% female) who went on to fall (mean interval to fall, 6.5 years) and 5494 controls (mean age at initial CT, 66.7 ± 9.8 years; 63.4% females; mean follow-up interval, 6.6 years) were included. Falls were identified by electronic health record review. Validated and fully automated quantitative CT algorithms for skeletal muscle, adipose tissue, and trabecular bone attenuation at the level of L1 were applied to all scans. Uni- and multivariate assessment included hazard ratios (HRs) and area under the receiver operating characteristic (AUROC) curve., Results: Fall HRs (with 95% CI) for low muscle Hounsfield unit, high total adipose area, and low bone Hounsfield unit were 1.82 (1.65-2.00), 1.31 (1.19-1.44) and 1.91 (1.74-2.11), respectively, and the 10-year AUROC values for predicting falls were 0.619, 0.556, and 0.639, respectively. Combining all these CT biomarkers further improved the predictive value, including 10-year AUROC of 0.657., Conclusion: Automated abdominal CT-based opportunistic measures of muscle, fat, and bone offer a novel approach to risk stratification for future falls, potentially by identifying patients with osteosarcopenic obesity., Advances in Knowledge: There are few well-established clinical tools to predict falls. We use novel AI-based body composition algorithms to leverage incidental CT data to help determine a patient's future fall risk., (© 2023 The Authors. Published by the British Institute of Radiology.)
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- 2023
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44. Multimodality Imaging of Hamartomas: Interactive Case-based Approach.
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Lee MH, Lubner MG, Kennedy TA, Ross A, Gegios A, Mellnick V, Bhalla S, Buehler D, and Pickhardt PJ
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- Humans, Multimodal Imaging, Hamartoma diagnostic imaging
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- 2023
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45. Abdominal Imaging in the Coming Decades: Better, Faster, Safer, and Cheaper?
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Pickhardt PJ
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- Humans, Abdomen diagnostic imaging, Diagnostic Imaging
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- 2023
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46. Abdominal CT Body Composition Thresholds Using Automated AI Tools for Predicting 10-year Adverse Outcomes.
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Lee MH, Zea R, Garrett JW, Graffy PM, Summers RM, and Pickhardt PJ
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- Male, Adult, Humans, Female, Middle Aged, Retrospective Studies, Calcium, Artificial Intelligence, Abdominal Muscles, Tomography, X-Ray Computed methods, Body Composition, Fractures, Bone, Cardiovascular Diseases
- Abstract
Background CT-based body composition measures derived from fully automated artificial intelligence tools are promising for opportunistic screening. However, body composition thresholds associated with adverse clinical outcomes are lacking. Purpose To determine population and sex-specific thresholds for muscle, abdominal fat, and abdominal aortic calcium measures at abdominal CT for predicting risk of death, adverse cardiovascular events, and fragility fractures. Materials and Methods In this retrospective single-center study, fully automated algorithms for quantifying skeletal muscle (L3 level), abdominal fat (L3 level), and abdominal aortic calcium were applied to noncontrast abdominal CT scans from asymptomatic adults screened from 2004 to 2016. Longitudinal follow-up documented subsequent death, adverse cardiovascular events (myocardial infarction, cerebrovascular event, and heart failure), and fragility fractures. Receiver operating characteristic (ROC) curve analysis was performed to derive thresholds for body composition measures to achieve optimal ROC curve performance and high specificity (90%) for 10-year risks. Results A total of 9223 asymptomatic adults (mean age, 57 years ± 7 [SD]; 5152 women and 4071 men) were evaluated (median follow-up, 9 years). Muscle attenuation and aortic calcium had the highest diagnostic performance for predicting death, with areas under the ROC curve of 0.76 for men (95% CI: 0.72, 0.79) and 0.72 for women (95% CI: 0.69, 0.76) for muscle attenuation. Sex-specific thresholds were higher in men than women ( P < .001 for muscle attenuation for all outcomes). The highest-performing markers for risk of death were muscle attenuation in men (31 HU; 71% sensitivity [164 of 232 patients]; 72% specificity [1114 of 1543 patients]) and aortic calcium in women (Agatston score, 167; 70% sensitivity [152 of 218 patients]; 70% specificity [1427 of 2034 patients]). Ninety-percent specificity thresholds for muscle attenuation for both risk of death and fragility fractures were 23 HU (men) and 13 HU (women). For aortic calcium and risk of death and adverse cardiovascular events, 90% specificity Agatston score thresholds were 1475 (men) and 735 (women). Conclusion Sex-specific thresholds for automated abdominal CT-based body composition measures can be used to predict risk of death, adverse cardiovascular events, and fragility fractures. © RSNA, 2022 Online supplemental material is available for this article. See also the editorial by Ohliger in this issue.
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- 2023
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47. Improved CT-based Osteoporosis Assessment with a Fully Automated Deep Learning Tool.
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Pickhardt PJ, Nguyen T, Perez AA, Graffy PM, Jang S, Summers RM, and Garrett JW
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Purpose: To develop, test, and validate a deep learning (DL) tool that improves upon a previous feature-based CT image processing bone mineral density (BMD) algorithm and compare it against the manual reference standard., Materials and Methods: This single-center, retrospective, Health Insurance Portability and Accountability Act-compliant study included manual L1 trabecular Hounsfield unit measurements from abdominal CT scans in 11 035 patients (mean age, 58 years ± 12 [SD]; 6311 women) as the reference standard. Automated level selection and L1 trabecular region of interest (ROI) placement were then performed in this CT cohort with both a previously validated feature-based image processing tool and a new DL tool. Overall technical success rates and agreement with the manual reference standard were assessed., Results: The overall success rate of the DL tool in this heterogeneous patient cohort was significantly higher than that of the older image processing BMD algorithm (99.3% vs 89.4%, P < .001). Using this DL tool, the closest median Hounsfield unit values for single-, three-, and seven-slice vertebral ROIs were within 5% of the manual reference standard Hounsfield unit values in 35.1%, 56.9%, and 85.8% of scans; within 10% in 56.6%, 75.6%, and 92.9% of scans; and within 25% in 76.5%, 89.3%, and 97.1% of scans, respectively. Trade-offs in sensitivity and specificity for osteoporosis assessment were observed from the single-slice approach (sensitivity, 39.4%; specificity, 98.3%) to the minimum value of the multislice approach (for seven contiguous slices; sensitivity, 71.3% and specificity, 94.6%)., Conclusion: The new DL BMD tool demonstrated a higher success rate than the older feature-based image processing tool, and its outputs can be targeted for higher specificity or sensitivity for osteoporosis assessment. Keywords: CT, CT-Quantitative, Abdomen/GI, Skeletal-Axial, Spine, Deep Learning, Machine Learning Supplemental material is available for this article. © RSNA, 2022., Competing Interests: Disclosures of conflicts of interest: P.J.P. Consulting fees for advisor to Bracco, Nanox, and GE Healthcare; stock/stock options in Nanox. T.N. No relevant relationships. A.A.P. Support for attending meetings and/or travel from UW Health for academic radiology conferences. P.M.G. No relevant relationships. S.J. No relevant relationships. R.M.S. Grant from PingAn (CRADA); royalties for patents or licenses from iCAD, Philips, ScanMed, PingAn, Translation Holdings; associate editor of Radiology: Artificial Intelligence. J.W.G. R01 LM013151/LM/NLM NIH HHS/United States grant., (© 2022 by the Radiological Society of North America, Inc.)
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- 2022
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48. Fully Automated and Explainable Liver Segmental Volume Ratio and Spleen Segmentation at CT for Diagnosing Cirrhosis.
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Lee S, Elton DC, Yang AH, Koh C, Kleiner DE, Lubner MG, Pickhardt PJ, and Summers RM
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Purpose: To evaluate the performance of a deep learning (DL) model that measures the liver segmental volume ratio (LSVR) (ie, the volumes of Couinaud segments I-III/IV-VIII) and spleen volumes from CT scans to predict cirrhosis and advanced fibrosis., Materials and Methods: For this Health Insurance Portability and Accountability Act-compliant, retrospective study, two datasets were used. Dataset 1 consisted of patients with hepatitis C who underwent liver biopsy (METAVIR F0-F4, 2000-2016). Dataset 2 consisted of patients who had cirrhosis from other causes who underwent liver biopsy (Ishak 0-6, 2001-2021). Whole liver, LSVR, and spleen volumes were measured with contrast-enhanced CT by radiologists and the DL model. Areas under the receiver operating characteristic curve (AUCs) for diagnosing advanced fibrosis (≥METAVIR F2 or Ishak 3) and cirrhosis (≥METAVIR F4 or Ishak 5) were calculated. Multivariable models were built on dataset 1 and tested on datasets 1 (hold out) and 2., Results: Datasets 1 and 2 consisted of 406 patients (median age, 50 years [IQR, 44-56 years]; 297 men) and 207 patients (median age, 50 years [IQR, 41-57 years]; 147 men), respectively. In dataset 1, the prediction of cirrhosis was similar between the manual versus automated measurements for spleen volume (AUC, 0.86 [95% CI: 0.82, 0.9] vs 0.85 [95% CI: 0.81, 0.89]; significantly noninferior, P < .001) and LSVR (AUC, 0.83 [95% CI: 0.78, 0.87] vs 0.79 [95% CI: 0.74, 0.84]; P < .001). The best performing multivariable model achieved AUCs of 0.94 (95% CI: 0.89, 0.99) and 0.79 (95% CI: 0.71, 0.87) for cirrhosis and 0.8 (95% CI: 0.69, 0.91) and 0.71 (95% CI: 0.64, 0.78) for advanced fibrosis in datasets 1 and 2, respectively., Conclusion: The CT-based DL model performed similarly to radiologists. LSVR and splenic volume were predictive of advanced fibrosis and cirrhosis. Keywords: CT, Liver, Cirrhosis, Computer Applications-Detection/Diagnosis Supplemental material is available for this article. © RSNA, 2022., Competing Interests: Disclosures of conflicts of interest: S.L. No relevant relationships. D.C.E. No relevant relationships. A.H.Y. No relevant relationships. C.K. No relevant relationships. D.E.K. No relevant relationships. M.G.L. Prior grant funding from Philips, Ethicon. P.J.P. Consulting fees from Bracco; stock/stock options in SHINE and Elucent; royalties from Elsevier. R.M.S. Royalties for patent and software licenses (iCAD, PingAn, Philips, ScanMed, Translation Holdings); PingAn has cooperative research and development agreement with author's institution; associate editor of Radiology: Artificial Intelligence., (© 2022 by the Radiological Society of North America, Inc.)
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- 2022
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49. Extraskeletal Ewing Sarcoma from Head to Toe: Multimodality Imaging Review.
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Wright A, Desai M, Bolan CW, Badawy M, Guccione J, Rao Korivi B, Pickhardt PJ, Mellnick VM, Lubner MG, Chen L, and Elsayes KM
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- Adult, Child, Humans, Multimodal Imaging, Positron Emission Tomography Computed Tomography, Toes pathology, Bone Neoplasms diagnostic imaging, Bone Neoplasms pathology, Neuroectodermal Tumors, Primitive, Sarcoma, Ewing diagnostic imaging, Sarcoma, Ewing therapy
- Abstract
Extraskeletal Ewing sarcoma (EES) is a rare subtype in the Ewing sarcoma family of tumors (ESFT), which also includes Ewing sarcoma of bone (ESB) and, more recently, primitive neuroectodermal tumors. Although these tumors often have different manifestations, they are grouped on the basis of common genetic translocation and diagnosis from specific molecular and immunohistochemical features. While the large majority of ESFT cases occur in children and in bones, approximately 25% originate outside the skeleton as EES. Importantly, in the adult population these extraskeletal tumors are more common than ESB. Imaging findings of EES tumors are generally nonspecific, with some variation based on location and the tissues involved. A large tumor with central necrosis that does not cross the midline is typical. Despite often nonspecific findings, imaging plays an important role in the evaluation and management of ESFT, with MRI frequently the preferred imaging modality for primary tumor assessment and local staging. Chest CT and fluorine 18 fluorodeoxyglucose PET/CT are most sensitive for detecting lung and other distant or nodal metastases. Management often involves chemotherapy with local surgical excision, when possible. A multidisciplinary treatment approach should be used given the propensity for large tumor size and local invasion, which can make resection difficult. Despite limited data, outcomes are similar to those of other ESFT cases, with 5-year survival exceeding 80%. However, with metastatic disease, the long-term prognosis is poor.
© RSNA, 2022.- Published
- 2022
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50. Fully Automated Abdominal CT Biomarkers for Type 2 Diabetes Using Deep Learning.
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Tallam H, Elton DC, Lee S, Wakim P, Pickhardt PJ, and Summers RM
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- Biomarkers, Female, Humans, Middle Aged, Retrospective Studies, Tomography, X-Ray Computed methods, Deep Learning, Diabetes Mellitus, Type 2 diagnostic imaging
- Abstract
Background CT biomarkers both inside and outside the pancreas can potentially be used to diagnose type 2 diabetes mellitus. Previous studies on this topic have shown significant results but were limited by manual methods and small study samples. Purpose To investigate abdominal CT biomarkers for type 2 diabetes mellitus in a large clinical data set using fully automated deep learning. Materials and Methods For external validation, noncontrast abdominal CT images were retrospectively collected from consecutive patients who underwent routine colorectal cancer screening with CT colonography from 2004 to 2016. The pancreas was segmented using a deep learning method that outputs measurements of interest, including CT attenuation, volume, fat content, and pancreas fractal dimension. Additional biomarkers assessed included visceral fat, atherosclerotic plaque, liver and muscle CT attenuation, and muscle volume. Univariable and multivariable analyses were performed, separating patients into groups based on time between type 2 diabetes diagnosis and CT date and including clinical factors such as sex, age, body mass index (BMI), BMI greater than 30 kg/m
2 , and height. The best set of predictors for type 2 diabetes were determined using multinomial logistic regression. Results A total of 8992 patients (mean age, 57 years ± 8 [SD]; 5009 women) were evaluated in the test set, of whom 572 had type 2 diabetes mellitus. The deep learning model had a mean Dice similarity coefficient for the pancreas of 0.69 ± 0.17, similar to the interobserver Dice similarity coefficient of 0.69 ± 0.09 ( P = .92). The univariable analysis showed that patients with diabetes had, on average, lower pancreatic CT attenuation (mean, 18.74 HU ± 16.54 vs 29.99 HU ± 13.41; P < .0001) and greater visceral fat volume (mean, 235.0 mL ± 108.6 vs 130.9 mL ± 96.3; P < .0001) than those without diabetes. Patients with diabetes also showed a progressive decrease in pancreatic attenuation with greater duration of disease. The final multivariable model showed pairwise areas under the receiver operating characteristic curve (AUCs) of 0.81 and 0.85 between patients without and patients with diabetes who were diagnosed 0-2499 days before and after undergoing CT, respectively. In the multivariable analysis, adding clinical data did not improve upon CT-based AUC performance (AUC = 0.67 for the CT-only model vs 0.68 for the CT and clinical model). The best predictors of type 2 diabetes mellitus included intrapancreatic fat percentage, pancreatic fractal dimension, plaque severity between the L1 and L4 vertebra levels, average liver CT attenuation, and BMI. Conclusion The diagnosis of type 2 diabetes mellitus was associated with abdominal CT biomarkers, especially measures of pancreatic CT attenuation and visceral fat. © RSNA, 2022 Online supplemental material is available for this article.- Published
- 2022
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