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841
Table 4_Exploring common circulating diagnostic biomarkers for sleep disorders and stroke based on machine learning.xlsx
Published 2025“…With WGCNA and machine-learning algorithms analyses, we found that ARL2 is an important common marker for both diseases.…”
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842
Table 2_Exploring common circulating diagnostic biomarkers for sleep disorders and stroke based on machine learning.xlsx
Published 2025“…With WGCNA and machine-learning algorithms analyses, we found that ARL2 is an important common marker for both diseases.…”
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843
Image 1_Exploring common circulating diagnostic biomarkers for sleep disorders and stroke based on machine learning.tif
Published 2025“…With WGCNA and machine-learning algorithms analyses, we found that ARL2 is an important common marker for both diseases.…”
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844
Image 4_Exploring common circulating diagnostic biomarkers for sleep disorders and stroke based on machine learning.tif
Published 2025“…With WGCNA and machine-learning algorithms analyses, we found that ARL2 is an important common marker for both diseases.…”
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845
Image 2_Exploring common circulating diagnostic biomarkers for sleep disorders and stroke based on machine learning.tiff
Published 2025“…With WGCNA and machine-learning algorithms analyses, we found that ARL2 is an important common marker for both diseases.…”
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846
Data Sheet 1_Comprehensive bioinformatics analysis identifies metabolic and immune-related diagnostic biomarkers shared between diabetes and COPD using multi-omics and machine lear...
Published 2025“…</p>Results<p>Cross-analysis identified 186 shared DEGs between diabetes and COPD patients. Functional enrichment results demonstrate that metabolic and immune-related pathways are common features altered in both diabetes and COPD patients. …”
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847
Data Sheet 2_Exploring common circulating diagnostic biomarkers for sleep disorders and stroke based on machine learning.csv
Published 2025“…With WGCNA and machine-learning algorithms analyses, we found that ARL2 is an important common marker for both diseases.…”
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848
Image 3_Exploring common circulating diagnostic biomarkers for sleep disorders and stroke based on machine learning.tiff
Published 2025“…With WGCNA and machine-learning algorithms analyses, we found that ARL2 is an important common marker for both diseases.…”
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849
Data Sheet 1_Exploring common circulating diagnostic biomarkers for sleep disorders and stroke based on machine learning.csv
Published 2025“…With WGCNA and machine-learning algorithms analyses, we found that ARL2 is an important common marker for both diseases.…”
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850
Image 2_Leveraging the integration of bioinformatics and machine learning to uncover common biomarkers and molecular pathways underlying diabetes and nephrolithiasis.tif
Published 2025“…Differentially expressed genes (DEGs) were subsequently analyzed using 10 commonly used machine learning algorithms, generating 101 unique combinations to identify the final DEGs. …”
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851
Image 3_Leveraging the integration of bioinformatics and machine learning to uncover common biomarkers and molecular pathways underlying diabetes and nephrolithiasis.tif
Published 2025“…Differentially expressed genes (DEGs) were subsequently analyzed using 10 commonly used machine learning algorithms, generating 101 unique combinations to identify the final DEGs. …”
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852
Image 1_Leveraging the integration of bioinformatics and machine learning to uncover common biomarkers and molecular pathways underlying diabetes and nephrolithiasis.tif
Published 2025“…Differentially expressed genes (DEGs) were subsequently analyzed using 10 commonly used machine learning algorithms, generating 101 unique combinations to identify the final DEGs. …”
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853
<b>NanoNeuroBot: Beyond Healing, Toward Human Connection</b>
Published 2025“…The research also explores development timelines, projected budgets, ethical concerns, and translational potential in both clinical and commercial applications.</p>…”
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854
Image 4_Leveraging the integration of bioinformatics and machine learning to uncover common biomarkers and molecular pathways underlying diabetes and nephrolithiasis.tif
Published 2025“…Differentially expressed genes (DEGs) were subsequently analyzed using 10 commonly used machine learning algorithms, generating 101 unique combinations to identify the final DEGs. …”
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855
Image 2_Spatial transcriptomic analysis of 4NQO-induced tongue cancer revealed cellular lineage diversity and evolutionary trajectory.tif
Published 2025“…</p>Methods<p>We leveraged artificial intelligence (AI) algorithms and spatial transcriptomic sequencing to meticulously characterize the spatial and temporal evolution of 4-nitroquinoline-1-oxide (4NQO)-induced tongue carcinogenesis and intratumor heterogeneity.…”
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856
Image 1_Spatial transcriptomic analysis of 4NQO-induced tongue cancer revealed cellular lineage diversity and evolutionary trajectory.tif
Published 2025“…</p>Methods<p>We leveraged artificial intelligence (AI) algorithms and spatial transcriptomic sequencing to meticulously characterize the spatial and temporal evolution of 4-nitroquinoline-1-oxide (4NQO)-induced tongue carcinogenesis and intratumor heterogeneity.…”
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857
Table 1_Leveraging the integration of bioinformatics and machine learning to uncover common biomarkers and molecular pathways underlying diabetes and nephrolithiasis.docx
Published 2025“…Differentially expressed genes (DEGs) were subsequently analyzed using 10 commonly used machine learning algorithms, generating 101 unique combinations to identify the final DEGs. …”
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858
Image 3_Spatial transcriptomic analysis of 4NQO-induced tongue cancer revealed cellular lineage diversity and evolutionary trajectory.tif
Published 2025“…</p>Methods<p>We leveraged artificial intelligence (AI) algorithms and spatial transcriptomic sequencing to meticulously characterize the spatial and temporal evolution of 4-nitroquinoline-1-oxide (4NQO)-induced tongue carcinogenesis and intratumor heterogeneity.…”
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859
Image 5_Leveraging the integration of bioinformatics and machine learning to uncover common biomarkers and molecular pathways underlying diabetes and nephrolithiasis.tif
Published 2025“…Differentially expressed genes (DEGs) were subsequently analyzed using 10 commonly used machine learning algorithms, generating 101 unique combinations to identify the final DEGs. …”
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860
Table_1_Shared diagnostic genes and potential mechanism between PCOS and recurrent implantation failure revealed by integrated transcriptomic analysis and machine learning.docx
Published 2025“…By analyzing differentially expressed genes (DEGs) and module genes using weighted gene co-expression networks (WGCNA), functional enrichment analysis, and three machine learning algorithms, we identified twelve diseases shared genes, and two diagnostic genes, including GLIPR1 and MAMLD1. …”