Showing 601 - 620 results of 954 for search '(( ((algorithm python) OR (algorithm both)) function ) OR ( algorithms python function ))', query time: 0.36s Refine Results
  1. 601

    Table 11_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.xlsx by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  2. 602

    Image 1_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.tif by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  3. 603

    Table 7_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.xlsx by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  4. 604

    Table 4_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.xlsx by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  5. 605

    Table 6_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.xlsx by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  6. 606

    Table 10_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.xlsx by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  7. 607

    Table 1_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.xlsx by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  8. 608

    Table 8_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.xlsx by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  9. 609

    Table 9_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.xls by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  10. 610

    Table 2_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.xlsx by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  11. 611

    Table 5_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.xlsx by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  12. 612

    Table 3_Identification and experimental validation of demethylation-related genes in diabetic nephropathy.xlsx by Hui Miao (143177)

    Published 2025
    “…In the RNA binding protein (RBP) -mRNA regulatory network, seven pathways were co-enriched in both biomarkers. In the TF-mRNA regulatory network, TFs shared by both biomarkers include JUN, GATA2, and SRF. …”
  13. 613

    Data_Sheet_3_Potential diagnostic markers and therapeutic targets for non-alcoholic fatty liver disease and ulcerative colitis based on bioinformatics analysis and machine learning... by Zheng Luo (284622)

    Published 2024
    “…Additionally, we used the CIBERSORT algorithm to explore immune infiltration patterns in both NAFLD and UC samples. …”
  14. 614

    Data_Sheet_4_Potential diagnostic markers and therapeutic targets for non-alcoholic fatty liver disease and ulcerative colitis based on bioinformatics analysis and machine learning... by Zheng Luo (284622)

    Published 2024
    “…Additionally, we used the CIBERSORT algorithm to explore immune infiltration patterns in both NAFLD and UC samples. …”
  15. 615

    Data_Sheet_2_Potential diagnostic markers and therapeutic targets for non-alcoholic fatty liver disease and ulcerative colitis based on bioinformatics analysis and machine learning... by Zheng Luo (284622)

    Published 2024
    “…Additionally, we used the CIBERSORT algorithm to explore immune infiltration patterns in both NAFLD and UC samples. …”
  16. 616

    Data_Sheet_1_Potential diagnostic markers and therapeutic targets for non-alcoholic fatty liver disease and ulcerative colitis based on bioinformatics analysis and machine learning... by Zheng Luo (284622)

    Published 2024
    “…Additionally, we used the CIBERSORT algorithm to explore immune infiltration patterns in both NAFLD and UC samples. …”
  17. 617

    PR curves of improved YOLOv5s. by Tianyu Cheng (5075000)

    Published 2025
    “…Experimental results show that the mAP@0.5% of improved YOLOv5s algorithm increases from 92.7% to 99.3%, which means 6.6% accuracy improvement compared with the YOLOv5s model. …”
  18. 618

    Table 1_Advancing breast cancer biomarkers: a centromere-related gene signature integrated with single-cell analysis for prognostic prediction.docx by Ye Lu (138787)

    Published 2025
    “…Additionally, the biological function of the key molecule MMP1 was validated through both in vitro and in vivo experiments.…”
  19. 619

    The improved DeepSORT framework. by Tianyu Cheng (5075000)

    Published 2025
    “…Experimental results show that the mAP@0.5% of improved YOLOv5s algorithm increases from 92.7% to 99.3%, which means 6.6% accuracy improvement compared with the YOLOv5s model. …”
  20. 620

    YOLOv5s model with attention modules. by Tianyu Cheng (5075000)

    Published 2025
    “…Experimental results show that the mAP@0.5% of improved YOLOv5s algorithm increases from 92.7% to 99.3%, which means 6.6% accuracy improvement compared with the YOLOv5s model. …”