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Classification of histopathology images using ConvNets to detect Lupus Nephritis

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arxiv 2112.07555 v1 pith:KU7QUYVA submitted 2021-12-14 eess.IV cs.CVcs.LGq-bio.TO

Classification of histopathology images using ConvNets to detect Lupus Nephritis

classification eess.IV cs.CVcs.LGq-bio.TO
keywords renalclassificationlupusglomeruliimagesnephritispatternsslide
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Systemic lupus erythematosus (SLE) is an autoimmune disease in which the immune system of the patient starts attacking healthy tissues of the body. Lupus Nephritis (LN) refers to the inflammation of kidney tissues resulting in renal failure due to these attacks. The International Society of Nephrology/Renal Pathology Society (ISN/RPS) has released a classification system based on various patterns observed during renal injury in SLE. Traditional methods require meticulous pathological assessment of the renal biopsy and are time-consuming. Recently, computational techniques have helped to alleviate this issue by using virtual microscopy or Whole Slide Imaging (WSI). With the use of deep learning and modern computer vision techniques, we propose a pipeline that is able to automate the process of 1) detection of various glomeruli patterns present in these whole slide images and 2) classification of each image using the extracted glomeruli features.

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