12 results on '"Shuo-Yu Xu"'
Search Results
2. Cross-cohort analysis identified an immune checkpoint-based signature to predict the clinical outcomes of neuroblastoma
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Hui Xu, Lei Miao, Na Liu, Fang Wang, Feng-Hua Wang, Ran Wang, Sha Fu, Ling Deng, Ying-Qing Li, Shuo-Yu Xu, Kai Chen, Liang Zeng, Le Li, Shu-Hua Li, Liang-Jun Qin, and Hai-Yun Wang
- Subjects
Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Background Neuroblastoma (NB) places a substantial health burden on families worldwide. This study aimed to develop an immune checkpoint-based signature (ICS) based on the expression of immune checkpoints to better assess patient survival risk and potentially guide patient selection for immunotherapy of NB.Methods Immunohistochemistry integrated with digital pathology was used to determine the expression levels of 9 immune checkpoints in 212 tumor tissues used as the discovery set. The GSE85047 dataset (n=272) was used as a validation set in this study. In the discovery set, the ICS was constructed using a random forest algorithm and confirmed in the validation set to predict overall survival (OS) and event-free survival (EFS). Kaplan-Meier curves with a log-rank test were drawn to compare the survival differences. A receiver operating characteristic (ROC) curve was applied to calculate the area under the curve (AUC).Results Seven immune checkpoints, including PD-L1, B7-H3, IDO1, VISTA, T-cell immunoglobulin and mucin domain containing-3 (TIM-3), inducible costimulatory molecule (ICOS) and costimulatory molecule 40 (OX40), were identified as abnormally expressed in NB in the discovery set. OX40, B7-H3, ICOS and TIM-3 were eventually selected for the ICS model in the discovery set, and 89 patients with high risk had an inferior OS (HR 15.91, 95% CI 8.87 to 28.55, p
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- 2023
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3. Clinical actionability of triaging DNA mismatch repair deficient colorectal cancer from biopsy samples using deep learning
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Wu Jiang, Wei-Jian Mei, Shuo-Yu Xu, Yi-Hong Ling, Wei-Rong Li, Jin-Bo Kuang, Hao-Sen Li, Hui Hui, Ji-Bin Li, Mu-Yan Cai, Zhi-Zhong Pan, Hui-Zhong Zhang, Li Li, and Pei-Rong Ding
- Subjects
Colorectal cancer ,Mismatch repair-deficient ,Deep learning ,Screening strategy ,Dual-threshold ,Medicine ,Medicine (General) ,R5-920 - Abstract
Summary: Background: We aimed to develop a deep learning (DL) model to predict DNA mismatch repair (MMR) status in colorectal cancers (CRC) based on hematoxylin and eosin-stained whole-slide images (WSIs) and assess its clinical applicability. Methods: The DL model was developed and validated through three-fold cross validation using 441 WSIs from the Cancer Genome Atlas (TCGA) and externally validated using 78 WSIs from the Pathology AI Platform (PAIP), and 355 WSIs from surgical specimens and 341 WSIs from biopsy specimens of the Sun Yet-sun University Cancer Center (SYSUCC). Domain adaption and multiple instance learning (MIL) techniques were adopted for model development. The performance of the models was evaluated using the area under the receiver operating characteristic curve (AUROC). A dual-threshold strategy was also built from the surgical cohorts and validated in the biopsy cohort. Sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), F1-score, and the percentage of patients avoiding IHC testing were evaluated. Findings: The MIL model achieved an AUROC of 0·8888±0·0357 in the TCGA-validation cohort, 0·8806±0·0232 in the PAIP cohort, 0·8457±0·0233 in the SYSUCC-surgical cohort, and 0·7679±0·0342 in the SYSUCC-biopsy cohort. A dual-threshold triage strategy was used to rule-in and rule-out dMMR patients with remaining uncertain patients recommended for further IHC testing, which kept sensitivity higher than 90% and specificity higher than 95% on deficient MMR patient triage from both the surgical and biopsy specimens, result in more than half of patients avoiding IHC based MMR testing. Interpretation: A DL-based method that could directly predict CRC MMR status from WSIs was successfully developed, and a dual-threshold triage strategy was established to minimize the number of patients for further IHC testing. Funding: The study was funded by the National Natural Science Foundation of China (82073159, 81871971 and 81700576), the Natural Science Foundation of Guangdong Province (No. 2021A1515011792 and No.2022A1515012403) and Medical Scientific Research Foundation of Guangdong Province of China (No. A2020392).
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- 2022
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4. Clinical Significance of a CD3/CD8-Based Immunoscore in Neuroblastoma Patients Using Digital Pathology
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Liang Zeng, Shu-Hua Li, Shuo-Yu Xu, Kai Chen, Liang-Jun Qin, Xiao-Yun Liu, Fang Wang, Sha Fu, Ling Deng, Feng-Hua Wang, Lei Miao, Le Li, Na Liu, Ran Wang, and Hai-Yun Wang
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neuroblastoma ,prognosis ,immunology ,digital pathology ,CD3/CD8 T cells ,Immunologic diseases. Allergy ,RC581-607 - Abstract
BackgroundInfiltrating immune cells have been reported as prognostic markers in many cancer types. We aimed to evaluate the prognostic role of tumor-infiltrating lymphocytes, namely CD3+ T cells, CD8+ cytotoxic T cells and memory T cells (CD45RO+), in neuroblastoma.Patients and MethodsImmunohistochemistry was used to determine the expression of CD3, CD8 and CD45RO in the tumor samples of 244 neuroblastoma patients. We then used digital pathology to calculate the densities of these markers and derived an immunoscore based on such densities.ResultsDensities of CD3+ and CD8+ T cells in tumor were positively associated with the overall survival (OS) and event-free survival (EFS), whereas density of CD45RO+ T cells in tumor was negatively associated with OS but not EFS. An immunoscore with low density of CD3 and CD8 (CD3-CD8-) was indictive of a greater risk of death (hazard ratio 6.39, 95% confidence interval 3.09-13.20) and any event (i.e., relapse at any site, progressive disease, second malignancy, or death) (hazard ratio 4.65, 95% confidence interval 2.73-7.93). Multivariable analysis revealed that the CD3-CD8- immunoscore was an independent prognostic indicator for OS, even after adjusting for other known prognostic indicators.ConclusionsThe new immunoscore based on digital pathology evaluated densities of tumor-infiltrating CD3+ and CD8+ T cells contributes to the prediction of prognosis in neuroblastoma patients.
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- 2022
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5. Development and validation of an immune checkpoint-based signature to predict prognosis in nasopharyngeal carcinoma using computational pathology analysis
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Ya-Qin Wang, Yu Zhang, Wei Jiang, Yu-Pei Chen, Shuo-Yu Xu, Na Liu, Yin Zhao, Li Li, Yuan Lei, Xiao-Hong Hong, Ye-Lin Liang, Jun-Yan Li, Lu-Lu Zhang, Jing-Ping Yun, Ying Sun, Ying-Qin Li, and Jun Ma
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Immune checkpoint-based signature ,Nasopharyngeal carcinoma ,Computational pathology analysis ,Tumour-immune microenvironment ,EBV-DNA ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Abstract Background Immunotherapy, especially immune checkpoint inhibition, has provided powerful tools against cancer. We aimed to detect the expression of common immune checkpoints and evaluate their prognostic values in nasopharyngeal carcinoma (NPC). Methods The expression of 9 immune checkpoints consistent with 13 features was detected in the training cohort (n = 208) by immunohistochemistry and quantified by computational pathology. Then, the LASSO cox regression model was used to construct an immune checkpoint-based signature (ICS), which was validated in a validation cohort containing 125 patients. Results High positive expression of PD-L1 and B7-H4 was observed in tumour cells (TCs), whereas PD-L1, B7-H3, B7-H4, IDO-1, VISTA, ICOS and OX40 were highly expressed in tumour-associated immune cells (TAICs). Eight of the 13 immune features were associated with patient overall survival, and an ICS classifier consisting of 5 features (B7-H3TAIC, IDO-1TAIC, VISTATAIC, ICOSTAIC, and LAG3TAIC) was established. Patients with high-risk scores in the training cohort had shorter overall (P
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- 2019
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6. Spatial heterogeneity of immune infiltration predicts the prognosis of nasopharyngeal carcinoma patients
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Ya-Qin Wang, Xu Liu, Cheng Xu, Wei Jiang, Shuo-Yu Xu, Yu Zhang, Ye Lin Liang, Jun-Yan Li, Qian Li, Yu-Pei Chen, Yin Zhao, Jing-Ping Yun, Na Liu, Ying-Qin Li, and Jun Ma
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spatial heterogeneity ,immune hotspot ,nasopharyngeal carcinoma ,digital pathology ,tumor immune microenvironment ,Immunologic diseases. Allergy ,RC581-607 ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Spatial information on the tumor immune microenvironment is of clinical relevance. Here, we aimed to quantify the spatial heterogeneity of lymphocytes and cancer cells and evaluated its prognostic value in patients with nasopharyngeal carcinoma (NPC). The scanned immunohistochemistry images of 336 NPC patients from two different hospitals were used to generate cell density maps for tumor and immune cells. Then, Getis-Ord hotspot analysis, a spatial statistic method used to describe species biodiversity in ecological habitats, was applied to identify cancer, immune, and immune-cancer hotspots. The results showed that cancer hotspots were not associated with any of the studied clinical outcomes, while immune-cancer hotspots predicted worse overall survival (OS) in the training cohort. In contrast, a high immune hotspot score was significantly associated with better OS (HR 0.41, 95% CI 0.22–0.77, P = .006), disease-free survival (DFS) (HR 0.43, 95% CI 0.24–0.75, P = .003) and distant metastasis-free survival (DMFS) (HR 0.40, 95% CI 0.20–0.81, P = .011) in NPC patients in the training cohort, and similar associations were also evident in the validation cohort. Importantly, multivariate analysis revealed that the immune hotspot score remained an independent prognostic indicator for OS, DFS, and DMFS in both cohorts. We explored the spatial heterogeneity of cancer cells and lymphocytes in the tumor microenvironment of NPC patients using digital pathology and ecological analysis methods and further constructed three spatial scores. Our study demonstrates that spatial variation may aid in the identification of the clinical prognosis of NPC patients, but further investigation is needed.
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- 2021
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7. Prognostic value of immune score in nasopharyngeal carcinoma using digital pathology
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Na Liu, Lei Chen, Wei Jiang, Yu Zhang, Yu-Pei Chen, Ya-Qin Wang, Yan-Ping Mao, Ying-Qing Li, Shuo-Yu Xu, Xiao-Min Li, Qing-Mei He, Shi-Wei He, Xiao-Jing Yang, Yuan Lei, Yin Zhao, Jing-Ping Yun, and Yingqin Li
- Subjects
Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Background Tumor-infiltrating lymphocytes have been reported as prognostic markers in tumors. We aimed to assess the prognostic value of total T cell (CD3+) density, cytotoxic T cell (CD8+) density and memory T cell (CD45RO+) density in patients with nasopharyngeal carcinoma (NPC).Methods The expression of CD3, CD8 and CD45RO was detected by immunohistochemistry in the training (n=221) and validation cohorts (n=115). The densities of these three markers were quantified by digital pathology both in the tumor and stroma. Then, we developed the immune score based on the density of these three markers and further analyzed its prognostic value.Results The high density of CD3+, CD8+ and CD45RO+ T cells both in the tumor and/or stroma were significantly associated with the decrease in mortality in the training cohort, respectively. High immune score predicted a prolonged overall survival (OS) (HR 0.34, 95% CI 0.18 to 0.64, p=0.001, disease-free survival (DFS) (HR 0.44, 95% CI 0.25 to 0.78, p=0.005) and distant metastasis-free survival (DMFS) (HR 0.43, 95% CI 0.21 to 0.87, p=0.018) in NPC patients. The findings were confirmed in the validation cohort. Multivariate analysis revealed that immune score remained an independent prognostic indicator for OS, DFS and DMFS. In addition, we established a nomogram with the integration of all independent variables to predict individual risk of death.Conclusions We established an immune score model, which provides a reliable estimate of the risk of death, disease progress and distant metastasis in NPC patients.
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- 2020
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8. Cross-cohort analysis identified an immune checkpoint-based signature to predict the clinical outcomes of neuroblastoma
- Author
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Liang Zeng, Hui Xu, Shu-Hua Li, Shuo-Yu Xu, Kai Chen, Liang-Jun Qin, Lei Miao, Fang Wang, Ling Deng, Feng-Hua Wang, Le Li, Sha Fu, Na Liu, Ran Wang, Ying-Qing Li, and Hai-Yun Wang
- Subjects
Pharmacology ,Cancer Research ,Oncology ,Immunology ,Molecular Medicine ,Immunology and Allergy - Abstract
BackgroundNeuroblastoma (NB) places a substantial health burden on families worldwide. This study aimed to develop an immune checkpoint-based signature (ICS) based on the expression of immune checkpoints to better assess patient survival risk and potentially guide patient selection for immunotherapy of NB.MethodsImmunohistochemistry integrated with digital pathology was used to determine the expression levels of 9 immune checkpoints in 212 tumor tissues used as the discovery set. The GSE85047 dataset (n=272) was used as a validation set in this study. In the discovery set, the ICS was constructed using a random forest algorithm and confirmed in the validation set to predict overall survival (OS) and event-free survival (EFS). Kaplan-Meier curves with a log-rank test were drawn to compare the survival differences. A receiver operating characteristic (ROC) curve was applied to calculate the area under the curve (AUC).ResultsSeven immune checkpoints, including PD-L1, B7-H3, IDO1, VISTA, T-cell immunoglobulin and mucin domain containing-3 (TIM-3), inducible costimulatory molecule (ICOS) and costimulatory molecule 40 (OX40), were identified as abnormally expressed in NB in the discovery set. OX40, B7-H3, ICOS and TIM-3 were eventually selected for the ICS model in the discovery set, and 89 patients with high risk had an inferior OS (HR 15.91, 95% CI 8.87 to 28.55, pConclusionsWe propose an ICS that significantly differentiates between low-risk and high-risk patients, which might add prognostic value to age and provide clues for immunotherapy in NB.
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- 2023
9. Clinical actionability of triaging DNA mismatch repair deficient colorectal cancer from biopsy samples using deep learning
- Author
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Wu Jiang, Wei-Jian Mei, Shuo-Yu Xu, Yi-Hong Ling, Wei-Rong Li, Jin-Bo Kuang, Hao-Sen Li, Hui Hui, Ji-Bin Li, Mu-Yan Cai, Zhi-Zhong Pan, Hui-Zhong Zhang, Li Li, and Pei-Rong Ding
- Subjects
Deep Learning ,Biopsy ,Humans ,General Medicine ,Triage ,Colorectal Neoplasms ,DNA Mismatch Repair ,General Biochemistry, Genetics and Molecular Biology - Abstract
We aimed to develop a deep learning (DL) model to predict DNA mismatch repair (MMR) status in colorectal cancers (CRC) based on hematoxylin and eosin-stained whole-slide images (WSIs) and assess its clinical applicability.The DL model was developed and validated through three-fold cross validation using 441 WSIs from the Cancer Genome Atlas (TCGA) and externally validated using 78 WSIs from the Pathology AI Platform (PAIP), and 355 WSIs from surgical specimens and 341 WSIs from biopsy specimens of the Sun Yet-sun University Cancer Center (SYSUCC). Domain adaption and multiple instance learning (MIL) techniques were adopted for model development. The performance of the models was evaluated using the area under the receiver operating characteristic curve (AUROC). A dual-threshold strategy was also built from the surgical cohorts and validated in the biopsy cohort. Sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), F1-score, and the percentage of patients avoiding IHC testing were evaluated.The MIL model achieved an AUROC of 0·8888±0·0357 in the TCGA-validation cohort, 0·8806±0·0232 in the PAIP cohort, 0·8457±0·0233 in the SYSUCC-surgical cohort, and 0·7679±0·0342 in the SYSUCC-biopsy cohort. A dual-threshold triage strategy was used to rule-in and rule-out dMMR patients with remaining uncertain patients recommended for further IHC testing, which kept sensitivity higher than 90% and specificity higher than 95% on deficient MMR patient triage from both the surgical and biopsy specimens, result in more than half of patients avoiding IHC based MMR testing.A DL-based method that could directly predict CRC MMR status from WSIs was successfully developed, and a dual-threshold triage strategy was established to minimize the number of patients for further IHC testing.The study was funded by the National Natural Science Foundation of China (82073159, 81871971 and 81700576), the Natural Science Foundation of Guangdong Province (No. 2021A1515011792 and No.2022A1515012403) and Medical Scientific Research Foundation of Guangdong Province of China (No. A2020392).
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- 2021
10. Correction: Tislelizumab in Chinese patients with advanced solid tumors: an open-label, non-comparative, phase 1/2 study
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Yu-Pei Chen, Ya-Qin Wang, Yan-Ping Mao, Ying-Qing Li, Shuo-Yu Xu, Xiao-Min Li, Qing-Mei He, Shi-Wei He, Xiao-Jing Yang, Yuan Lei, Yin Zhao, Jing-Ping Yun, and Yingqin Li
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Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Published
- 2020
11. Correction: Dual oxidase 1 limits the IFNγ-associated antitumor effect of macrophages
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Yu-Pei Chen, Ya-Qin Wang, Yan-Ping Mao, Ying-Qing Li, Shuo-Yu Xu, Xiao-Min Li, Qing-Mei He, Shi-Wei He, Xiao-Jing Yang, Yuan Lei, Yin Zhao, Jing-Ping Yun, and Yingqin Li
- Subjects
Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Published
- 2020
12. MOESM2 of Development and validation of an immune checkpoint-based signature to predict prognosis in nasopharyngeal carcinoma using computational pathology analysis
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Wang, Ya-Qin, Zhang, Yu, Jiang, Wei, Chen, Yu-Pei, Shuo-Yu Xu, Liu, Na, Zhao, Yin, Li, Li, Lei, Yuan, Hong, Xiao-Hong, Ye-Lin Liang, Li, Jun-Yan, Zhang, Lu-Lu, Yun, Jing-Ping, Sun, Ying, Ying-Qin Li, and Ma, Jun
- Abstract
Additional file 2: Table S1. Clinicopathological characteristics of the patients in the training and validation cohorts stratified according to the ICS. Table S2. Immune checkpoint co-expression by tumour cells (TCs) in the training cohort. Table S3. Five-year OS, DFS and DMFS estimates for different groups. Table S4. Number of events for different groups. Table S5. Univariate analysis of factors associated with overall survival in the training and validation cohorts. Table S6. Univariate analysis of factors associated with disease-free survival in the training and validation cohorts. Table S7. Univariate analysis of factors associated with distant metastasis-free survival in the training and validation cohorts. Table S8. Multivariable Cox regression analysis of factors associated with survival in the training and validation cohorts. Table S9. Summary of the multivariable analyses of prognostic factors for OS, DFS, DMFS and corresponding risk score in the training set of 208 nasopharyngeal carcinoma patients.
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- 2019
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