New Horizons: Artificial Intelligence Tools for Managing Osteoporosis
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[1] J. H. Kim,et al. Development of a Spine X-Ray-Based Fracture Prediction Model Using a Deep Learning Algorithm , 2022, Endocrinology and metabolism.
[2] F. Ulivieri,et al. The Bone Strain Index: An Innovative Dual X-ray Absorptiometry Bone Strength Index and Its Helpfulness in Clinical Medicine , 2022, Journal of clinical medicine.
[3] G. Collins,et al. Artificial Intelligence in Fracture Detection: A Systematic Review and Meta-Analysis. , 2022, Radiology.
[4] P. Rajpurkar,et al. AI in health and medicine , 2022, Nature Medicine.
[5] Lei Wu,et al. A software program for automated compressive vertebral fracture detection on elderly women’s lateral chest radiograph: Ofeye 1.0 , 2021, Quantitative imaging in medicine and surgery.
[6] Mingqian Huang,et al. Fully automated radiomic screening pipeline for osteoporosis and abnormal bone density with a deep learning-based segmentation using a short lumbar mDixon sequence. , 2021, Quantitative imaging in medicine and surgery.
[7] E. Grossi,et al. Bone Strain Index predicts fragility fracture in osteoporotic women: an artificial intelligence-based study , 2021, European Radiology Experimental.
[8] W. Leslie,et al. Fracture risk assessment by the FRAX model , 2021, Climacteric : the journal of the International Menopause Society.
[9] S. Rojanasthien,et al. Bone mineral density response prediction following osteoporosis treatment using machine learning to aid personalized therapy , 2021, Scientific Reports.
[10] S. Mutasa,et al. Deciphering musculoskeletal artificial intelligence for clinical applications: how do I get started? , 2021, Skeletal Radiology.
[11] J. Kanis,et al. SCOPE 2021: a new scorecard for osteoporosis in Europe , 2021, Archives of Osteoporosis.
[12] Suril Gohel,et al. Machine Learning in Healthcare , 2021, Current genomics.
[13] T. Hügle,et al. Machine Learning Solutions for Osteoporosis—A Review , 2021, Journal of bone and mineral research : the official journal of the American Society for Bone and Mineral Research.
[14] H. Terai,et al. Using artificial intelligence to diagnose fresh osteoporotic vertebral fractures on magnetic resonance images. , 2021, The spine journal : official journal of the North American Spine Society.
[15] L. Gao,et al. Application of artificial intelligence in diagnosis of osteoporosis using medical images: a systematic review and meta-analysis , 2021, Osteoporosis International.
[16] Xiaojun Chen,et al. Opportunistic osteoporosis screening in multi-detector CT images using deep convolutional neural networks , 2020, European Radiology.
[17] J. Kanis,et al. Adjusting conventional FRAX estimates of fracture probability according to the recency of sentinel fractures , 2020, Osteoporosis International.
[18] G. Fan,et al. Diagnostic accuracy of deep learning in orthopaedic fractures: a systematic review and meta-analysis. , 2020, Clinical radiology.
[19] N. Watts,et al. AMERICAN ASSOCIATION OF CLINICAL ENDOCRINOLOGISTS/AMERICAN COLLEGE OF ENDOCRINOLOGY CLINICAL PRACTICE GUIDELINES FOR THE DIAGNOSIS AND TREATMENT OF POSTMENOPAUSAL OSTEOPOROSIS-2020 UPDATE. , 2020, Endocrine practice : official journal of the American College of Endocrinology and the American Association of Clinical Endocrinologists.
[20] E. Grossi,et al. Artificial neural network analysis of bone quality DXA parameters response to teriparatide in fractured osteoporotic patients , 2020, PloS one.
[21] R. Eastell,et al. Pharmacological Management of Osteoporosis in Postmenopausal Women: An Endocrine Society Guideline Update. , 2020, The Journal of clinical endocrinology and metabolism.
[22] O. Abe,et al. Prediction of bone mineral density from computed tomography: application of deep learning with a convolutional neural network , 2020, European Radiology.
[23] Sudha Ram,et al. A Novel Fracture Prediction Model Using Machine Learning in a Community‐Based Cohort , 2020, JBMR plus.
[24] J. Kanis,et al. A decade of FRAX: how has it changed the management of osteoporosis? , 2020, Aging Clinical and Experimental Research.
[25] Jinwook Choi,et al. Evaluation of Transfer Learning with Deep Convolutional Neural Networks for Screening Osteoporosis in Dental Panoramic Radiographs , 2020, Journal of clinical medicine.
[26] Ninon Burgos,et al. Convolutional Neural Networks for Classification of Alzheimer's Disease: Overview and Reproducible Evaluation , 2019, Medical Image Anal..
[27] C. Cooper,et al. Algorithm for the management of patients at low, high and very high risk of osteoporotic fractures , 2019, Osteoporosis International.
[28] Quentin Grimal,et al. Artificial neural network to estimate micro-architectural properties of cortical bone using ultrasonic attenuation: A 2-D numerical study , 2019, Comput. Biol. Medicine.
[29] B. Zemel,et al. Executive Summary of the 2019 ISCD Position Development Conference on Monitoring Treatment, DXA Cross-calibration and Least Significant Change, Spinal Cord Injury, Periprosthetic and Orthopedic Bone Health, Transgender Medicine, and Pediatrics. , 2019, Journal of clinical densitometry : the official journal of the International Society for Clinical Densitometry.
[30] A. Krishnaraj,et al. Simulating Dual-Energy X-Ray Absorptiometry in CT Using Deep-Learning Segmentation Cascade. , 2019, Journal of the American College of Radiology : JACR.
[31] H. Gong,et al. Prediction of lumbar vertebral strength of elderly men based on quantitative computed tomography images using machine learning , 2019, Osteoporosis International.
[32] Qianjin Feng,et al. Direct automated quantitative measurement of spine by cascade amplifier regression network with manifold regularization , 2019, Medical Image Anal..
[33] Gene Kitamura,et al. Ankle Fracture Detection Utilizing a Convolutional Neural Network Ensemble Implemented with a Small Sample, De Novo Training, and Multiview Incorporation , 2019, Journal of Digital Imaging.
[34] Lingxiao Pan,et al. Artificial intelligence detection of distal radius fractures: a comparison between the convolutional neural network and professional assessments , 2019, Acta orthopaedica.
[35] C. Zimmer,et al. Improved prediction of incident vertebral fractures using opportunistic QCT compared to DXA , 2019, European Radiology.
[36] Eric J Topol,et al. High-performance medicine: the convergence of human and artificial intelligence , 2019, Nature Medicine.
[37] Mingqian Huang,et al. Prediction of Abnormal Bone Density and Osteoporosis From Lumbar Spine MR Using Modified Dixon Quant in 257 Subjects With Quantitative Computed Tomography as Reference , 2018, Journal of magnetic resonance imaging : JMRI.
[38] Michel Dumontier,et al. Fundamentals of Clinical Data Science , 2018 .
[39] D. Kiel,et al. Prediction of incident vertebral fracture using CT-based finite element analysis , 2018, Osteoporosis International.
[40] Anu Shaju Areeckal,et al. Combined radiogrammetry and texture analysis for early diagnosis of osteoporosis using Indian and Swiss data , 2018, Comput. Medical Imaging Graph..
[41] P. Geusens,et al. Persistence of Excess Mortality Following Individual Nonhip Fractures: A Relative Survival Analysis , 2018, The Journal of clinical endocrinology and metabolism.
[42] Saeed Hassanpour,et al. Deep neural networks for automatic detection of osteoporotic vertebral fractures on CT scans , 2018, Comput. Biol. Medicine.
[43] W. Leslie,et al. The utility and limitations of using trabecular bone score with FRAX , 2018, Current opinion in rheumatology.
[44] D. Vashishth,et al. Mechanical Characterization of Bone: State of the Art in Experimental Approaches—What Types of Experiments Do People Do and How Does One Interpret the Results? , 2018, Current Osteoporosis Reports.
[45] H. Asadi,et al. Vertebroplasty and Kyphoplasty for Osteoporotic Vertebral Fractures: What Are the Latest Data? , 2017, American Journal of Neuroradiology.
[46] C. Cooper,et al. European guidance for the diagnosis and management of osteoporosis in postmenopausal women , 2018, Osteoporosis International.
[47] Hyongsuk Kim,et al. Osteoporosis detection in panoramic radiographs using a deep convolutional neural network-based computer-assisted diagnosis system: a preliminary study. , 2019, Dento maxillo facial radiology.
[48] S. Silverman,et al. Quality of life after hip, vertebral, and distal forearm fragility fractures measured using the EQ-5D-3L, EQ-VAS, and time-trade-off: results from the ICUROS , 2018, Quality of Life Research.
[49] Anu Shaju Areeckal,et al. Early diagnosis of osteoporosis using radiogrammetry and texture analysis from hand and wrist radiographs in Indian population , 2018, Osteoporosis International.
[50] H. Dimai,et al. Use of dual-energy X-ray absorptiometry (DXA) for diagnosis and fracture risk assessment; WHO-criteria, T- and Z-score, and reference databases. , 2017, Bone.
[51] P. Hamet,et al. Artificial intelligence in medicine. , 2017, Metabolism: Clinical and Experimental.
[52] V. Gudnason,et al. Imminent risk of fracture after fracture , 2017, Osteoporosis International.
[53] J. Schousboe. Epidemiology of Vertebral Fractures. , 2016, Journal of clinical densitometry : the official journal of the International Society for Clinical Densitometry.
[54] Geoffrey E. Hinton,et al. Deep Learning , 2015, Nature.
[55] C. Cooper,et al. Worldwide uptake of FRAX , 2014, Archives of Osteoporosis.
[56] A. LaCroix,et al. Risk Factors for Treatment Failure With Antiosteoporosis Medication: The Global Longitudinal Study of Osteoporosis in Women (GLOW) , 2014, Journal of bone and mineral research : the official journal of the American Society for Bone and Mineral Research.
[57] C. Cooper,et al. Capture the Fracture: a Best Practice Framework and global campaign to break the fragility fracture cycle , 2013, Osteoporosis International.
[58] J. Shepherd,et al. Executive summary of the 2013 International Society for Clinical Densitometry Position Development Conference on bone densitometry. , 2013, Journal of clinical densitometry : the official journal of the International Society for Clinical Densitometry.
[59] Vipin Chaudhary,et al. Compression fracture diagnosis in lumbar: a clinical CAD system , 2013, International Journal of Computer Assisted Radiology and Surgery.
[60] C. Cooper,et al. A systematic review of hip fracture incidence and probability of fracture worldwide , 2012, Osteoporosis International.
[61] W. Leslie,et al. Bone microarchitecture assessed by TBS predicts osteoporotic fractures independent of bone density: The manitoba study , 2011, Journal of bone and mineral research : the official journal of the American Society for Bone and Mineral Research.
[62] Eve Donnelly,et al. Methods for Assessing Bone Quality: A Review , 2011, Clinical orthopaedics and related research.
[63] J. Kanis,et al. Development and use of FRAX® in osteoporosis , 2010, Osteoporosis International.
[64] O. Johnell,et al. An estimate of the worldwide prevalence and disability associated with osteoporotic fractures , 2006, Osteoporosis International.
[65] F. Yaşar,et al. The differences in panoramic mandibular indices and fractal dimension between patients with and without spinal osteoporosis. , 2006, Dento maxillo facial radiology.
[66] H. Genant,et al. Underdiagnosis of Vertebral Fractures Is a Worldwide Problem: The IMPACT Study , 2004, Journal of bone and mineral research : the official journal of the American Society for Bone and Mineral Research.
[67] O. Johnell,et al. Epidemiology of osteoporotic fractures , 2005, Osteoporosis International.
[68] Stuart C. White,et al. Clinical and panoramic predictors of femur bone mineral density , 2005, Osteoporosis International.
[69] R. Francis. Non-response to osteoporosis treatment , 2004, The Journal of The British Menopause Society.
[70] H. Genant,et al. Severity of prevalent vertebral fractures and the risk of subsequent vertebral and nonvertebral fractures: results from the MORE trial. , 2003, Bone.
[71] S. Kawai,et al. Magnetic resonance imaging diagnosis and new classification of the osteoporotic vertebral fracture , 2003, Journal of orthopaedic science : official journal of the Japanese Orthopaedic Association.
[72] T. Abbott,et al. Patients with Prior Fractures Have an Increased Risk of Future Fractures: A Summary of the Literature and Statistical Synthesis , 2000, Journal of bone and mineral research : the official journal of the American Society for Bone and Mineral Research.
[73] O. Johnell,et al. Meta-analysis of how well measures of bone mineral density predict occurrence of osteoporotic fractures , 1996 .
[74] M. Nevitt,et al. Vertebral fracture assessment using a semiquantitative technique , 1993, Journal of bone and mineral research : the official journal of the American Society for Bone and Mineral Research.
[75] Consensus development conference: prophylaxis and treatment of osteoporosis. , 1991, Osteoporosis international : a journal established as result of cooperation between the European Foundation for Osteoporosis and the National Osteoporosis Foundation of the USA.