2021
DOI: 10.1007/s00281-021-00847-y
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How will artificial intelligence and bioinformatics change our understanding of IgA Nephropathy in the next decade?

Abstract: IgA nephropathy (IgAN) is the most common glomerulonephritis. It is characterized by the deposition of immune complexes containing immunoglobulin A (IgA) in the kidney’s glomeruli, triggering an inflammatory process. In many patients, the disease has a progressive course, eventually leading to end-stage kidney disease. The current understanding of IgAN’s pathophysiology is incomplete, with the involvement of several potential players, including the mucosal immune system, the complement system, and the microbio… Show more

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Cited by 19 publications
(13 citation statements)
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“…We conclude this edition with a final review by Peter Boor and Julio Saez-Rodriguez, who review the future of evaluation of the kidney biopsy, in particular the use of artificial intelligence, and of systems biology approaches to gain further develop histopathologic insights and a deeper understanding of the pathogenesis of IgAN [11].…”
Section: Iga Nephropathy: a Perspective For 2021mentioning
confidence: 99%
“…We conclude this edition with a final review by Peter Boor and Julio Saez-Rodriguez, who review the future of evaluation of the kidney biopsy, in particular the use of artificial intelligence, and of systems biology approaches to gain further develop histopathologic insights and a deeper understanding of the pathogenesis of IgAN [11].…”
Section: Iga Nephropathy: a Perspective For 2021mentioning
confidence: 99%
“…However, this process requires advanced computational methods in the generation, process, and analysis of big data. 62 This integrated information is essential to map the full spectrum of common and rare IgAN risk genes, the transcriptomic pattern, and its modulation by epigenetic factors (e.g., microRNAs). 63 This approach could guide medicine towards a more individualized treatment.…”
Section: Renal Biopsymentioning
confidence: 99%
“…The understanding of the complex pathophysiology of the disease through the OMICS provides more information about novel promising biomarkers. However, this process requires advanced computational methods in the generation, process, and analysis of big data 62 . This integrated information is essential to map the full spectrum of common and rare IgAN risk genes, the transcriptomic pattern, and its modulation by epigenetic factors (e.g., microRNAs) 63 .…”
Section: Prognosismentioning
confidence: 99%
“…While prognostic scoring systems using clinical features and pathology (Oxford MEST scores) are well established, their role in the selection of patients for specific treatment regimens is highly uncertain [ 42 ]. AI methods may even further refine the predictive accuracy for outcomes, such as kidney failure [ 43 ]; however, applying these tools to examine the differential efficacy of therapeutic regimens to alter the predicted trajectory is still needed. Perhaps one or more of the trials in progress will fill this gap.…”
Section: Deep Phenotyping/genotyping Of Patients With Gnmentioning
confidence: 99%