18 results on '"Mo, Yiwen"'
Search Results
2. Joint rumour and stance identification based on semantic and structural information in social networks
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Luo, Nanhang, Xie, Dongdong, Mo, Yiwen, Li, Fei, Teng, Chong, and Ji, Donghong
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- 2024
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3. Patlak-Ki derived from ultra-high sensitivity dynamic total body [18F]FDG PET/CT correlates with the response to induction immuno-chemotherapy in locally advanced non-small cell lung cancer patients
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Wang, DaQuan, Qiu, Bo, Liu, QianWen, Xia, LiangPing, Liu, SongRan, Zheng, ChaoJie, Liu, Hui, Mo, YiWen, Zhang, Xu, Hu, YingYing, Zheng, ShiYang, Zhou, Yin, Fu, Jia, Chen, NaiBin, Liu, FangJie, Zhou, Rui, Guo, JinYu, Fan, Wei, and Liu, Hui
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- 2023
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4. Assessing dynamic metabolic heterogeneity in non-small cell lung cancer patients via ultra-high sensitivity total-body [18F]FDG PET/CT imaging: quantitative analysis of [18F]FDG uptake in primary tumors and metastatic lymph nodes
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Wang, DaQuan, Zhang, Xu, Liu, Hui, Qiu, Bo, Liu, SongRan, Zheng, ChaoJie, Fu, Jia, Mo, YiWen, Chen, NaiBin, Zhou, Rui, Chu, Chu, Liu, FangJie, Guo, JinYu, Zhou, Yin, Zhou, Yun, Fan, Wei, and Liu, Hui
- Published
- 2022
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5. Repeated dynamic [18F]FDG PET/CT imaging using a high-sensitivity PET/CT scanner for assessing non-small cell lung cancer patients undergoing induction immuno-chemotherapy followed by hypo-fractionated chemoradiotherapy and consolidative immunotherapy: report from a prospective observational study (GASTO-1067)
- Author
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Wang, DaQuan, Mo, YiWen, Liu, FangJie, Zheng, ShiYang, Liu, Hui, Li, HongDi, Guo, JinYu, Fan, Wei, Qiu, Bo, and Zhang, Xu
- Abstract
Objective: The study aims to investigate the role of dynamic [18F]FDG PET/CT imaging by high-sensitivity PET/CT scanner for assessing patients with locally advanced non-small cell lung cancer (LA-NSCLC) who undergo induction immuno-chemotherapy, followed by concurrent hypo-fractionated chemoradiotherapy (hypo-CCRT) and consolidative immunotherapy. Methods: Patients with unresectable LA-NSCLC are prospectively recruited. Dynamic [18F]FDG PET/CT scans are conducted at four timepoints: before treatment (Baseline), after induction immuno-chemotherapy (Post-IC), during hypo-CCRT (Mid-hypo-CCRT) and after hypo-CCRT (Post-hypo-CCRT). The primary lung tumors (PTs) are manually delineated, and the metabolic features, including the Patlak-Ki (Ki), maximum SUV (SUVmax), metabolic tumor volume (MTV) and total lesion glycolysis (TLG) have been evaluated. The expressions of CD3, CD8, CD68, CD163, CD34 and Ki67 in primary lung tumors at baseline are assayed by immunohistochemistry. The levels of blood lymphocytes at four timepoints are analyzed with flow cytometry. Results: Fifteen LA-NSCLC patients are enrolled between December 2020 and December 2022. Baseline Ki of primary tumor yields the highest AUC values of 0.722 and 0.796 for predicting disease progression and patient death, respectively. Patients are classified into the High FDG Ki group (n = 8, Ki > 2.779 ml/min/100 g) and the Low FDG Ki group (n = 7, Ki ≤ 2.779 ml/min/100 g). The High FDG Ki group presents better progression-free survival (P = 0.01) and overall survival (P = 0.025). The High FDG Ki group exhibits more significant reductions in Ki after hypo-CCRT compared to the Low FDG Ki group. Patients with a reduction in Ki > 73.1% exhibit better progression-free survival than those with a reduction ≤ 73.1% in Ki (median: not reached vs. 7.33 months, P = 0.12). The levels of CD3+ T cells (P = 0.003), CD8+ T cells (P = 0.002), CD68+ macrophages (P = 0.071) and CD163+ macrophages (P = 0.012) in primary tumor tissues are higher in the High FDG Ki group. The High FDG Ki group has higher CD3+CD8+ lymphocytes in blood at baseline (P = 0.108), post-IC (P = 0.023) and post-hypo-CCRT (P = 0.041) than the Low FDG Ki group. Conclusions: The metabolic features in the High FDG Ki group significantly decrease during the treatment, particularly after induction immuno-chemotherapy. The Ki value of primary tumor shows significant relationship with the treatment response and survival in LA-NSCLC patients by the combined immuno-chemoradiotherapy regimen. Trial registration: ClinicalTrials.gov. NCT04654234. Registered 4 December 2020. [ABSTRACT FROM AUTHOR]
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- 2024
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6. The Prognostic Significance of Pontine-White Matter Score in Primary Central Nervous System Lymphoma Patients.
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Li, Yongjiang, Mo, Yiwen, Chen, Mingshi, Zhang, Wenbiao, Li, Shuangjiang, and Zhang, Xu
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LYMPHOMA treatment , *RADIOPHARMACEUTICALS , *DEOXY sugars , *LYMPHOMAS , *POSITRON emission tomography computed tomography , *MAGNETIC resonance imaging , *DESCRIPTIVE statistics , *MULTIVARIATE analysis , *KAPLAN-Meier estimator , *LOG-rank test , *WHITE matter (Nerve tissue) , *STATISTICS , *TUMOR classification , *DATA analysis software , *CONFIDENCE intervals ,CENTRAL nervous system tumors - Abstract
Simple Summary: This study explored the prognostic significance of the pontine-white matter (PW) score in primary central nervous system (CNS) lymphoma patients with post-treatment 18F-FDG PET/CT and PET/MR imaging. Eligible patients were enrolled from January 2014 to December 2022. The PW score, derived from FDG uptake of the pons and white matter, was used to evaluate the metabolic activity of the treated lesion and its prognostic implications. A total of 90 patients across PET/CT and PET/MR modalities were assessed. The PW score demonstrated a robust discriminative ability in identifying patients with worse outcomes. It was also found to be a significant and independent indicator for worse prognosis in both PET/CT and PET/MR groups. The study demonstrated that this novel internal standardization indicator was an effective tool for risk stratification in primary CNS lymphoma post-treatment scenarios. Background: Limited data exist on the significance of PET imaging and quantitative PET parameters in primary central nervous system (CNS) lymphoma due to its relative rarity. This study was conducted to investigate the prognostic value of a novel internal standardization indicator, the pontine-white matter (PW) score, in primary CNS lymphoma patients undergoing post-treatment 18F-FDG PET/CT and PET/MR imaging. Methods: From January 2014 to December 2022, eligible patients with primary CNS lymphoma who underwent post-treatment PET imaging were enrolled. Using the FDG uptake of the pons and white matter as an internal reference, the PW score was graded based on the metabolism of the post-therapeutic lesion for each patient, and its associations with patients' prognosis were investigated. Results: In total, 41 patients with post-treatment PET/CT and 49 patients with post-treatment PET/MR imaging were enrolled. ROC curve analysis indicated that the PW score possessed robust discriminative ability in distinguishing patients with worse outcomes. Furthermore, a higher PW score was significantly correlated with and identified as an independent prognostic indicator for, worse prognosis in both the PET/CT and PET/MR cohorts. Conclusion: The study demonstrated that the PW score was an effective prognostic indicator for identifying post-treatment primary CNS lymphoma patients with worse outcomes. [ABSTRACT FROM AUTHOR]
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- 2024
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7. Boundary Recognition of Light-Pause Marks via Grammar Testing Method
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Mo, Yiwen, Chen, Bo, and Lei, Pei
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- 2018
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8. Patlak-Ki derived from ultra-high sensitivity dynamic total body [18F]FDG PET/CT correlates with the response to induction immuno-chemotherapy in locally advanced non-small cell lung cancer patients.
- Author
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Wang, DaQuan, Qiu, Bo, Liu, QianWen, Xia, LiangPing, Liu, SongRan, Zheng, ChaoJie, Liu, Hui, Mo, YiWen, Zhang, Xu, Hu, YingYing, Zheng, ShiYang, Zhou, Yin, Fu, Jia, Chen, NaiBin, Liu, FangJie, Zhou, Rui, Guo, JinYu, and Fan, Wei
- Subjects
NON-small-cell lung carcinoma ,URODYNAMICS ,NUCLEOTIDE sequencing ,CANCER patients ,MANN Whitney U Test ,INDUCED labor (Obstetrics) - Abstract
Purpose: This study aimed to investigate the predictive value of metabolic features in response to induction immuno-chemotherapy in patients with locally advanced non-small cell cancer (LA-NSCLC), using ultra-high sensitivity dynamic total body [
18 F]FDG PET/CT. Methods: The study analyzed LA-NSCLC patients who received two cycles of induction immuno-chemotherapy and underwent a 60-min dynamic total body [18 F]FDG PET/CT scan before treatment. The primary tumors (PTs) were manually delineated, and their metabolic features, including the Patlak-Ki, Patlak-Intercept, maximum SUV (SUVmax ), metabolic tumor volume (MTV) and total lesion glycolysis (TLG) were evaluated. The overall response rate (ORR) to induction immuno-chemotherapy was evaluated according to RECIST 1.1 criteria. The Patlak-Ki of PTs was calculated from the 20–60 min frames using the Patlak graphical analysis. The best feature was selected using Laplacian feature importance scores, and an unsupervised K-Means method was applied to cluster patients. ROC curve was used to examine the effect of selected metabolic feature in predicting tumor response to treatment. The targeted next generation sequencing on 1021 genes was conducted. The expressions of CD68, CD86, CD163, CD206, CD33, CD34, Ki67 and VEGFA were assayed through immunohistochemistry. The independent samples t test and the Mann–Whitney U test were applied in the intergroup comparison. Statistical significance was considered at P < 0.05. Results: Thirty-seven LA-NSCLC patients were analyzed between September 2020 and November 2021. All patients received two cycles of induction chemotherapy combined with Nivolumab/ Camrelizumab. The Laplacian scores showed that the Patlak-Ki of PTs had the highest importance for patient clustering, and the unsupervised K-Means derived decision boundary of Patlak-Ki was 2.779 ml/min/100 g. Patients were categorized into two groups based on their Patlak-Ki values: high FDG Patlak-Ki (H-FDG-Ki, Patlak-Ki > 2.779 ml/min/100 g) group (n = 23) and low FDG Patlak-Ki (L-FDG-Ki, Patlak-Ki ≤ 2.779 ml/min/100 g) group (n = 14). The ORR to induction immuno-chemotherapy was 67.6% (25/37) in the whole cohort, with 87% (20/23) in H-FDG-Ki group and 35.7% (5/14) in L-FDG-Ki group (P = 0.001). The sensitivity and specificity of Patlak-Ki in predicting the treatment response were 80% and 75%, respectively [AUC = 0.775 (95%CI 0.605–0.945)]. The expression of CD3+ /CD8+ T cells and CD86+ /CD163+ /CD206+ macrophages were higher in the H-FDG-Ki group, while Ki67, CD33+ myeloid cells, CD34+ micro-vessel density (MVD) and tumor mutation burden (TMB) were comparable between the two groups. Conclusions: The total body [18 F]FDG PET/CT scanner performed a dynamic acquisition of the entire body and clustered LA-NSCLC patients into H-FDG-Ki and L-FDG-Ki groups based on the Patlak-Ki. Patients with H-FDG-Ki demonstrated better response to induction immuno-chemotherapy and higher levels of immune cell infiltration in the PTs compared to those with L-FDG-Ki. Further studies with a larger patient cohort are required to validate these findings. [ABSTRACT FROM AUTHOR]- Published
- 2023
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9. Assessing dynamic metabolic heterogeneity in non-small cell lung cancer patients via ultra-high sensitivity total-body [18F]FDG PET/CT imaging: quantitative analysis of [18F]FDG uptake in primary tumors and metastatic lymph nodes.
- Author
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Wang, DaQuan, Zhang, Xu, Liu, Hui, Qiu, Bo, Liu, SongRan, Zheng, ChaoJie, Fu, Jia, Mo, YiWen, Chen, NaiBin, Zhou, Rui, Chu, Chu, Liu, FangJie, Guo, JinYu, Zhou, Yin, Zhou, Yun, and Fan, Wei
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NON-small-cell lung carcinoma ,METABOLISM ,LYMPH node cancer ,CANCER treatment ,CANCER immunotherapy - Abstract
Purpose: This study aimed to quantitatively assess [
18 F]FDG uptake in primary tumor (PT) and metastatic lymph node (mLN) in newly diagnosed non-small cell lung cancer (NSCLC) using the total-body [18 F]FDG PET/CT and to characterize the dynamic metabolic heterogeneity of NSCLC. Methods: The 60-min dynamic total-body [18 F]FDG PET/CT was performed before treatment. The PTs and mLNs were manually delineated. An unsupervised K-means classification method was used to cluster patients based on the imaging features of PTs. The metabolic features, including Patlak-Ki, Patlak-Intercept, SUVmean , metabolic tumor volume (MTV), total lesion glycolysis (TLG), and textural features, were extracted from PTs and mLNs. The targeted next-generation sequencing of tumor-associated genes was performed. The expression of Ki67, CD3, CD8, CD34, CD68, and CD163 in PTs was determined by immunohistochemistry. Results: A total of 30 patients with stage IIIA–IV NSCLC were enrolled. Patients were divided into fast dynamic FDG metabolic group (F-DFM) and slow dynamic FDG metabolic group (S-DFM) by the unsupervised K-means classification of PTs. The F-DFM group showed significantly higher Patlak-Ki (P < 0.001) and SUVmean (P < 0.001) of PTs compared with the S-DFM group, while no significant difference was observed in Patlak-Ki and SUVmean of mLNs between the two groups. The texture analysis indicated that PTs in the S-DFM group were more heterogeneous in FDG uptake than those in the F-DFM group. Higher T cells (CD3+ /CD8+ ) and macrophages (CD68+ /CD163+ ) infiltration in the PTs were observed in the F-DFM group. No significant difference was observed in tumor mutational burden between the two groups. Conclusion: The dynamic total-body [18 F]FDG PET/CT stratified NSCLC patients into the F-DFM and S-DFM groups, based on Patlak-Ki and SUVmean of PTs. PTs in the F-DFM group seemed to be more homogenous in terms of [18 F]FDG uptake than those in the S-DFM group. The higher infiltrations of T cells and macrophages were observed in the F-DFM group, which suggested a potential benefit from immunotherapy. [ABSTRACT FROM AUTHOR]- Published
- 2022
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10. CovidNet: To Bring Data Transparency in the Era of COVID-19
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Yang, Tong, Shen, Kai, He, Sixuan, Li, Enyu, Sun, Peter, Chen, Pingying, Zuo, Lin, Hu, Jiayue, Mo, Yiwen, Zhang, Weiwei, Zhang, Haonan, Chen, Jingxue, and Guo, Yu
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FOS: Computer and information sciences ,Computer Science - Computers and Society ,FOS: Biological sciences ,Computers and Society (cs.CY) ,Populations and Evolution (q-bio.PE) ,Quantitative Biology - Populations and Evolution - Abstract
Timely, creditable, and fine-granular case information is vital for local communities and individual citizens to make rational and data-driven responses to the COVID-19 pandemic. This paper presents CovidNet, a COVID-19 tracking project associated with a large scale epidemic dataset, which was initiated by 1Point3Acres. To the best of our knowledge, the project is the only platform providing real-time global case information of more than 4,124 sub-divisions from over 27 countries worldwide with multi-language supports. The platform also offers interactive visualization tools to analyze the full historical case curves in each region. Initially launched as a voluntary project to bridge the data transparency gap in North America in January 2020, this project by far has become one of the major independent sources worldwide and has been consumed by many other tracking platforms. The accuracy and freshness of the dataset is a result of the painstaking efforts from our voluntary teamwork, crowd-sourcing channels, and automated data pipelines. As of May 18, 2020, the project website has been visited more than 200 million times and the CovidNet dataset has empowered over 522 institutions and organizations worldwide in policy-making and academic researches. All datasets are openly accessible for non-commercial purposes at https://coronavirus.1point3acres.com via a formal request through our APIs., 10 pages, 5 figures, 2 tables
- Published
- 2020
11. Value of baseline and end of chemotherapy 18F-FDG PET/CT in pediatric patients with Burkitt lymphoma.
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Xiao, Zizheng, Mo, Yiwen, Long, Wen, Li, Ruping, Li, Xinling, Wei, Yuan, Fan, Wei, and Zhang, Xu
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CHILD patients , *PROGNOSIS , *PROPORTIONAL hazards models , *POSITRON emission tomography computed tomography , *LYMPHOMAS - Abstract
The aim of this study was to analyze whether the baseline metabolic parameters of 18F-FDG PET/CT in pediatric patients with Burkitt lymphoma (BL) can predict treatment response and prognosis. We retrospectively analyzed 68 pediatric patients with BL who underwent PET/CT before treatment. PET images were analyzed semi-quantitatively by measuring the maximum standardized uptake (SUVmax), total metabolic tumor volume (tMTV), and total lesion glycolysis (TLG). Survival curves were plotted according to the Kaplan–Meier method. Univariate and multivariate Cox proportional hazards regression models were used to assess the relation between potential variables and outcomes. tMTV and TLG were significantly lower in patients with complete response compared with those with partial response at the end of treatment. PET metabolic parameters (tMTV and TLG) were the independent prognostic values for outcome. TMTV and TLG were significantly connected with treatment response and prognosis in pediatric with BL. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
12. Value of Patlak-Ki from ultra-high sensitivity dynamic total body [ 18 F]FDG PET/CT for evaluation of treatment response to induction immuno-chemotherapy in locally advanced non-small cell lung cancer (LA-NSCLC) patients.
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Wang, DaQuan, Qiu, Bo, Liu, Qianwen, Xia, Liangping, Songran, Liu, Zheng, ChaoJie, Liu, Hui, Mo, Yiwen, Zhang, Xu, Hu, Ying-Ying, Zheng, ShiYang, Zhou, Yin, Fu, Jia, Chen, NaiBin, Liu, FangJie, Zhou, Rui, Guo, JinYu, and Fan, Wei
- Published
- 2023
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13. COVID-19 Vaccine Tweets After Vaccine Rollout: Sentimentâ€"Based Topic Modeling.
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Huangfu, Luwen, Mo, Yiwen, Zhang, Peijie, Zeng, Daniel Dajun, and He, Saike
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COVID-19 vaccines ,VACCINATION complications ,VACCINE hesitancy ,VACCINES - Abstract
Background: COVID-19 vaccines are one of the most effective preventive strategies for containing the pandemic. Having a better understanding of the public's conceptions of COVID-19 vaccines may aid in the effort to promptly and thoroughly vaccinate the community. However, because no empirical research has yet fully explored the public's vaccine awareness through sentiment–based topic modeling, little is known about the evolution of public attitude since the rollout of COVID-19 vaccines. Objective: In this study, we specifically focused on tweets about COVID-19 vaccines (Pfizer, Moderna, AstraZeneca, and Johnson & Johnson) after vaccines became publicly available. We aimed to explore the overall sentiments and topics of tweets about COVID-19 vaccines, as well as how such sentiments and main concerns evolved. Methods: We collected 1,122,139 tweets related to COVID-19 vaccines from December 14, 2020, to April 30, 2021, using Twitter's application programming interface. We removed retweets and duplicate tweets to avoid data redundancy, which resulted in 857,128 tweets. We then applied sentiment–based topic modeling by using the compound score to determine sentiment polarity and the coherence score to determine the optimal topic number for different sentiment polarity categories. Finally, we calculated the topic distribution to illustrate the topic evolution of main concerns. Results: Overall, 398,661 (46.51%) were positive, 204,084 (23.81%) were negative, 245,976 (28.70%) were neutral, 6899 (0.80%) were highly positive, and 1508 (0.18%) were highly negative sentiments. The main topics of positive and highly positive tweets were planning for getting vaccination (251,979/405,560, 62.13%), getting vaccination (76,029/405,560, 18.75%), and vaccine information and knowledge (21,127/405,560, 5.21%). The main concerns in negative and highly negative tweets were vaccine hesitancy (115,206/205,592, 56.04%), extreme side effects of the vaccines (19,690/205,592, 9.58%), and vaccine supply and rollout (17,154/205,592, 8.34%). During the study period, negative sentiment trends were stable, while positive sentiments could be easily influenced. Topic heatmap visualization demonstrated how main concerns changed during the current widespread vaccination campaign. Conclusions: To the best of our knowledge, this is the first study to evaluate public COVID-19 vaccine awareness and awareness trends on social media with automated sentiment–based topic modeling after vaccine rollout. Our results can help policymakers and research communities track public attitudes toward COVID-19 vaccines and help them make decisions to promote the vaccination campaign. J Med Internet Res 2022;24(2):e31726 doi:10.2196/31726 [ABSTRACT FROM AUTHOR]
- Published
- 2022
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14. Advantages and Challenges of Total-Body PET/CT at a Tertiary Cancer Center: Insights from Sun Yat-sen University Cancer Center.
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Chen W, Li Y, Li Z, Jiang Y, Cui Y, Zeng J, Mo Y, Tang S, Li S, Liu L, Zhao Y, Hu Y, and Fan W
- Subjects
- Humans, Neoplasms diagnostic imaging, Tertiary Care Centers, Cancer Care Facilities, Image Processing, Computer-Assisted methods, Positron Emission Tomography Computed Tomography methods, Whole Body Imaging methods
- Abstract
In recent decades, researchers worldwide have directed their efforts toward enhancing the quality of PET imaging. The detection sensitivity and image resolution of conventional PET scanners with a short axial field of view have been constrained, leading to a suboptimal signal-to-noise ratio. The advent of long-axial-field-of-view PET scanners, exemplified by the uEXPLORER system, marked a significant advancement. Total-body PET imaging possesses an extensive scan range of 194 cm and an ultrahigh detection sensitivity, and it has emerged as a promising avenue for improving image quality while reducing the administered radioactivity dose and shortening acquisition times. In this review, we elucidate the application of the uEXPLORER system at the Sun Yat-sen University Cancer Center, including the disease distribution, patient selection workflow, scanning protocol, and several enhanced clinical applications, along with encountered challenges. We anticipate that this review will provide insights into routine clinical practice and ultimately improve patient care., (© 2024 by the Society of Nuclear Medicine and Molecular Imaging.)
- Published
- 2024
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15. Correction: COVID-19 Vaccine Tweets After Vaccine Rollout: Sentiment-Based Topic Modeling.
- Author
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Huangfu L, Mo Y, Zhang P, Zeng DD, and He S
- Abstract
[This corrects the article DOI: 10.2196/31726.]., (©Luwen Huangfu, Yiwen Mo, Peijie Zhang, Daniel Dajun Zeng, Saike He. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 11.03.2022.)
- Published
- 2022
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16. COVID-19 Vaccine Tweets After Vaccine Rollout: Sentiment-Based Topic Modeling.
- Author
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Huangfu L, Mo Y, Zhang P, Zeng DD, and He S
- Subjects
- Attitude, COVID-19 Vaccines, Humans, Pandemics, SARS-CoV-2, COVID-19, Social Media
- Abstract
Background: COVID-19 vaccines are one of the most effective preventive strategies for containing the pandemic. Having a better understanding of the public's conceptions of COVID-19 vaccines may aid in the effort to promptly and thoroughly vaccinate the community. However, because no empirical research has yet fully explored the public's vaccine awareness through sentiment-based topic modeling, little is known about the evolution of public attitude since the rollout of COVID-19 vaccines., Objective: In this study, we specifically focused on tweets about COVID-19 vaccines (Pfizer, Moderna, AstraZeneca, and Johnson & Johnson) after vaccines became publicly available. We aimed to explore the overall sentiments and topics of tweets about COVID-19 vaccines, as well as how such sentiments and main concerns evolved., Methods: We collected 1,122,139 tweets related to COVID-19 vaccines from December 14, 2020, to April 30, 2021, using Twitter's application programming interface. We removed retweets and duplicate tweets to avoid data redundancy, which resulted in 857,128 tweets. We then applied sentiment-based topic modeling by using the compound score to determine sentiment polarity and the coherence score to determine the optimal topic number for different sentiment polarity categories. Finally, we calculated the topic distribution to illustrate the topic evolution of main concerns., Results: Overall, 398,661 (46.51%) were positive, 204,084 (23.81%) were negative, 245,976 (28.70%) were neutral, 6899 (0.80%) were highly positive, and 1508 (0.18%) were highly negative sentiments. The main topics of positive and highly positive tweets were planning for getting vaccination (251,979/405,560, 62.13%), getting vaccination (76,029/405,560, 18.75%), and vaccine information and knowledge (21,127/405,560, 5.21%). The main concerns in negative and highly negative tweets were vaccine hesitancy (115,206/205,592, 56.04%), extreme side effects of the vaccines (19,690/205,592, 9.58%), and vaccine supply and rollout (17,154/205,592, 8.34%). During the study period, negative sentiment trends were stable, while positive sentiments could be easily influenced. Topic heatmap visualization demonstrated how main concerns changed during the current widespread vaccination campaign., Conclusions: To the best of our knowledge, this is the first study to evaluate public COVID-19 vaccine awareness and awareness trends on social media with automated sentiment-based topic modeling after vaccine rollout. Our results can help policymakers and research communities track public attitudes toward COVID-19 vaccines and help them make decisions to promote the vaccination campaign., (©Luwen Huangfu, Yiwen Mo, Peijie Zhang, Daniel Dajun Zeng, Saike He. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 08.02.2022.)
- Published
- 2022
- Full Text
- View/download PDF
17. Value of baseline and end of chemotherapy 18 F-FDG PET/CT in pediatric patients with Burkitt lymphoma.
- Author
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Xiao Z, Mo Y, Long W, Li R, Li X, Wei Y, Fan W, and Zhang X
- Subjects
- Child, Glycolysis, Humans, Positron Emission Tomography Computed Tomography methods, Positron-Emission Tomography, Prognosis, Radiopharmaceuticals, Retrospective Studies, Tumor Burden, Burkitt Lymphoma diagnostic imaging, Burkitt Lymphoma drug therapy, Fluorodeoxyglucose F18
- Abstract
The aim of this study was to analyze whether the baseline metabolic parameters of
18 F-FDG PET/CT in pediatric patients with Burkitt lymphoma (BL) can predict treatment response and prognosis. We retrospectively analyzed 68 pediatric patients with BL who underwent PET/CT before treatment. PET images were analyzed semi-quantitatively by measuring the maximum standardized uptake (SUVmax), total metabolic tumor volume (tMTV), and total lesion glycolysis (TLG). Survival curves were plotted according to the Kaplan-Meier method. Univariate and multivariate Cox proportional hazards regression models were used to assess the relation between potential variables and outcomes. tMTV and TLG were significantly lower in patients with complete response compared with those with partial response at the end of treatment. PET metabolic parameters (tMTV and TLG) were the independent prognostic values for outcome. TMTV and TLG were significantly connected with treatment response and prognosis in pediatric with BL.- Published
- 2021
- Full Text
- View/download PDF
18. Preoperative AFU Is a Useful Serological Prognostic Predictor for Colorectal Liver Oligometastasis Patients Undergoing Hepatic Resection.
- Author
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Deng Y, Zhao Y, Fan W, Peng J, Luo X, Mo Y, Xiao B, Zhang L, and Pan Z
- Abstract
Background : Preoperative alpha-l-fucosidase (AFU) has been used as a diagnostic biomarker for several cancers, but its role as a prognostic predictor in colorectal cancer liver oligometastasis (CLOM) patients after radical surgery has not been well defined. This study aimed to investigate the prognostic significance of preoperative serum AFU for CLOM patients after hepatic resection. Methods : A retrospective data set was collected to evaluate the prognostic value of preoperative AFU in CLOM patients after radical hepatic resection. A total of 269 patients with histopathologically confirmed CLOM were enrolled. The optimal cut-off value of preoperative AFU was determined using X-tile software. Univariate and multivariate analyses were used to identify the prognostic significance of preoperative serum AFU. Results : The X-tile software showed that the optimal cut-off value of preoperative AFU was set at 30.8 U/L. Patients with preoperative AFU≤30.8 and >30.8 were classified into high and low AFU groups, respectively. Female patients and those with a single liver metastasis had a higher tendency to have a preoperative AFU≤30.8 U/L; patients with lower clinical risk score (CRS) were more likely to have AFU >30.8 U/L than patients with higher CRS. The results showed that preoperative AFU was an independent prognostic factor for overall survival (OS) (P=0.041). Patients with a preoperative AFU≤30.8 U/L had a lower OS rate than those with AFU>30.8 U/L. Furthermore, for patients with lower CRS scores (0-2), the tendency clearly showed that patients with higher preoperative AFU had a better prognosis (P=0.029). Conclusions : Higher preoperative serum AFU can predict better survival in CLOM patients after hepatic resection, especially for CLOM patients with lower CRS scores., Competing Interests: Competing Interests: The authors have declared that no competing interest exists., (© The author(s).)
- Published
- 2019
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