1.Research Progress of Parathyroid Ultrasound:A Bibliometric Analysis during 2004 to 2024
Yu XIA ; Nengwen LUO ; Yuxin JIANG
Journal of Medical Research 2025;54(7):115-122
Objective This study evaluates the research landscape,trends,and emerging hotspots in parathyroid ultrasound over the past 20 years using bibliometric methods and visualization tools,while providing insights into future research directions.Methods A comprehensive search was conducted in PubMed and Web of Science Core Collection(WOSCC)databases for parathyroid ultrasound stud-ies published between 1 January,2004 and 5 September,2024.A total of 1609 articles were included.Bibliometric analyses were per-formed using CiteSpace and VOSviewer to identify publication trends,key contributors,and research hotspots of parathyroid ultrasound.Results Annual publications in parathyroid ultrasound steadily increased,with China and the United States leading in research output.The most prolific author came from China,and the World Journal of Surgery was the leading journal in this field.Recent keywords,inclu-ding tertiary hyperparathyroidism,parathyroidectomy,and thermal ablation.Future research is expected to emphasize interdisciplinary col-laboration and the integration of emerging imaging technologies.Conclusion This study provides a comprehensive overview of research progress in parathyroid ultrasound,indicate emerging research frontiers and future trends.
2.Artificial intelligence-assisted system to identify follicular thyroid tumours
Luying GAO ; Liyuan MA ; Yu XIA ; Yuang AN ; Aonan PAN ; Nengwen LUO ; Jionghui GU ; Jiang JI ; Yuxin JIANG
Chinese Journal of Ultrasonography 2025;34(3):210-215
Objective:To assess the value of artificial intelligence(AI)assisted system in the diagnosis of malignancy in follicular thyroid tumours,and to compare with the diagnostic results of doctors with different levels of experience.Methods:A total of 101 nodules were retrospectively collected from 86 patients with follicular thyroid tumours who underwent surgical treatment at Peking Union Medical College Hospital,Chinese Academy of Medical Sciences,Peking Union Medical College from May 2016 to January 2018.The nodules were classified into risk group(29 patients,34 nodules,including 15 follicular carcinomas and 19 follicular tumours of indeterminable malignant potential)and benign group(59 atients,67 nodules,including 15 follicular adenomas and 52 nodular goitre adenomatoid hyperplasia). The sensitivities,specificities and accuracies of the AI system,two doctors of different seniorities(one junior A and one senior B),and guidelines of thyroid ultrasound malignancy risk stratification[including the 2015 American Thyroid Guidelines(ATA),the 2017 American College of Radiology Thyroid Imaging Reporting and Data System(ACR TI-RADS),the 2020 Chinese Society of Ultrasound,Thyroid Imaging Reporting and Data System(C-TIRADS)](classified by a senior doctor C)for diagnosing follicular tumours in the risk group and follicular carcinomas were calculated and compared.Results:The AI system showed a sensitivity of 46.7%,specificity of 89.6% and accuracy of 81.7% for diagnosing follicular carcinoma;and a sensitivity of 32.4%,specificity of 89.6% and accuracy of 70.3% for diagnosing follicular neoplasms(risk group). Compared with junior doctor A,the specificity of AI system in diagnosing follicular cancer and follicular neoplasms(risk group)was higher(89.6% vs. 83.6%, P=0.020;89.6% vs. 73.1%, P=0.020),and the differences of sensitivity were not significant(46.7% vs. 32.4%, P=0.181;32.4% vs. 11.8%, P=0.073). The difference of sensitivity and specificity were not statistically significant between the AI system and senior doctor B(all P>0.05).The differences in area under the curve for diagnosis of follicular carcinoma and follicular tumour(risk group)were not statistically significant between the AI system compared to junior doctor A,senior doctor B,the C-TIRADS,ATA guideline,and ACR TI-RADS(all P>0.05). Conclusions:Ultrasound-based AI-assisted diagnostic system is similarly efficient in diagnosing follicular thyroid tumours as experienced doctors,and the AI system diagnostic specificity is superior to that of junior doctors.
3.Research Progress of Parathyroid Ultrasound:A Bibliometric Analysis during 2004 to 2024
Yu XIA ; Nengwen LUO ; Yuxin JIANG
Journal of Medical Research 2025;54(7):115-122
Objective This study evaluates the research landscape,trends,and emerging hotspots in parathyroid ultrasound over the past 20 years using bibliometric methods and visualization tools,while providing insights into future research directions.Methods A comprehensive search was conducted in PubMed and Web of Science Core Collection(WOSCC)databases for parathyroid ultrasound stud-ies published between 1 January,2004 and 5 September,2024.A total of 1609 articles were included.Bibliometric analyses were per-formed using CiteSpace and VOSviewer to identify publication trends,key contributors,and research hotspots of parathyroid ultrasound.Results Annual publications in parathyroid ultrasound steadily increased,with China and the United States leading in research output.The most prolific author came from China,and the World Journal of Surgery was the leading journal in this field.Recent keywords,inclu-ding tertiary hyperparathyroidism,parathyroidectomy,and thermal ablation.Future research is expected to emphasize interdisciplinary col-laboration and the integration of emerging imaging technologies.Conclusion This study provides a comprehensive overview of research progress in parathyroid ultrasound,indicate emerging research frontiers and future trends.
4.Artificial intelligence-assisted system to identify follicular thyroid tumours
Luying GAO ; Liyuan MA ; Yu XIA ; Yuang AN ; Aonan PAN ; Nengwen LUO ; Jionghui GU ; Jiang JI ; Yuxin JIANG
Chinese Journal of Ultrasonography 2025;34(3):210-215
Objective:To assess the value of artificial intelligence(AI)assisted system in the diagnosis of malignancy in follicular thyroid tumours,and to compare with the diagnostic results of doctors with different levels of experience.Methods:A total of 101 nodules were retrospectively collected from 86 patients with follicular thyroid tumours who underwent surgical treatment at Peking Union Medical College Hospital,Chinese Academy of Medical Sciences,Peking Union Medical College from May 2016 to January 2018.The nodules were classified into risk group(29 patients,34 nodules,including 15 follicular carcinomas and 19 follicular tumours of indeterminable malignant potential)and benign group(59 atients,67 nodules,including 15 follicular adenomas and 52 nodular goitre adenomatoid hyperplasia). The sensitivities,specificities and accuracies of the AI system,two doctors of different seniorities(one junior A and one senior B),and guidelines of thyroid ultrasound malignancy risk stratification[including the 2015 American Thyroid Guidelines(ATA),the 2017 American College of Radiology Thyroid Imaging Reporting and Data System(ACR TI-RADS),the 2020 Chinese Society of Ultrasound,Thyroid Imaging Reporting and Data System(C-TIRADS)](classified by a senior doctor C)for diagnosing follicular tumours in the risk group and follicular carcinomas were calculated and compared.Results:The AI system showed a sensitivity of 46.7%,specificity of 89.6% and accuracy of 81.7% for diagnosing follicular carcinoma;and a sensitivity of 32.4%,specificity of 89.6% and accuracy of 70.3% for diagnosing follicular neoplasms(risk group). Compared with junior doctor A,the specificity of AI system in diagnosing follicular cancer and follicular neoplasms(risk group)was higher(89.6% vs. 83.6%, P=0.020;89.6% vs. 73.1%, P=0.020),and the differences of sensitivity were not significant(46.7% vs. 32.4%, P=0.181;32.4% vs. 11.8%, P=0.073). The difference of sensitivity and specificity were not statistically significant between the AI system and senior doctor B(all P>0.05).The differences in area under the curve for diagnosis of follicular carcinoma and follicular tumour(risk group)were not statistically significant between the AI system compared to junior doctor A,senior doctor B,the C-TIRADS,ATA guideline,and ACR TI-RADS(all P>0.05). Conclusions:Ultrasound-based AI-assisted diagnostic system is similarly efficient in diagnosing follicular thyroid tumours as experienced doctors,and the AI system diagnostic specificity is superior to that of junior doctors.

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