Chapter 2: Definition, identification, and prediction of CKD progression
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چکیده
RATIONALE The statement is worded this way to remind the practitioner to use both GFR and albuminuria in order to assess progression and is consistent with the definition offered in Chapter 1 regarding definitions of CKD which include both parameters. There is increasing evidence which supports that both parameters are valuable. Lower GFR and greater albuminuria are both associated with an increased rate of progression and are synergistic. More frequent measures of eGFR and albuminuria should be considered in patients with a lower GFR and greater albuminuria as these people are more likely to progress. Frequency of measurement should also be individualized based on the patient history and underlying cause of kidney disease. In specific conditions (e.g., GN or increased levels of albuminuria), frequent (every 1–3 months) assessment may guide therapeutic decisions. Regular monitoring of stable patients may include more frequent monitoring than annually, but will be dictated by underlying cause, history, and estimates of GFR and ACR values obtained previously.
منابع مشابه
KDIGO 2012 Clinical Practice Guideline for the Evaluation and Management of Chronic Kidney Disease KDIGO 2012 Clinical Practice Guideline for the Evaluation and Management of Chronic Kidney Disease
4 Summary of Recommendation Statements 5 Introduction: The case for updating and context 15 Chapter 1: Definition, and classification of CKD 19 Chapter 2: Definition, identification, and prediction of CKD progression 63 Chapter 3: Management of progression and complications of CKD 73 Chapter 4: Other complications of CKD: CVD, medication dosage, patient safety, infections, hospitalizations, and...
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