Product Images Cvs Maximum Strength Urinary Pain Relief

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Product Label Images

The following image provide visual information about the product associated with Cvs Maximum Strength Urinary Pain Relief NDC 69842-713 by Cvs Pharmacy Inc, such as packaging, labeling, and the appearance of the drug itself. This resource could be helpful for medical professionals, pharmacists, and patients seeking to verify medication information and ensure they have the correct product.

image of carton - qcmax0001

image of carton - qcmax0001

This is a drug facts sheet for a urinary tract analgesic named Azo Urinary Pain Relief Maximum Strength. The drug has Phenazopyridine Hydrochloride 99.5 mg as the active ingredient in each tablet. The drug provides fast relief from urinary pain, burning, and urgency associated with urinary tract infections. Treatment should not exceed two days without consulting a doctor. The product should not be used more than the recommended dosage. The inactive ingredients of this product include com starch, croscarmellose sodium, hypromellose, lactose, magnesium stearate, micro line cellulose, pol lane glycol, polyvinylpyrrolidones, pr:gulmnlmd starch, sllicon dioxide, sodium m%h%la(a?gclc in l:1W. Contact lens staining and interference with laboratory tests including urine, glucose (sugar), and ketones tests can occur due to this product. If you have Glucose-8-Phosphate Dehydrogenase (G6PD) deficiency, ask your physician before using it. The product is not manufactured or distributed by I-Health, Inc., distributor of Azo Urinary Pain Relief Maximum Strength. This product can cause a stomach upset. Pregnant and breastfeeding women should ask a health professional before use. It is advised to keep the drug out of reach of children. If an overdose occurs, contact a Poison Control Center immediately. The drug contains hydrochloride, which is known to the state of California to cause cancer.*

* The product label images have been analyzed using a combination of traditional computing and machine learning techniques. It should be noted that the descriptions provided may not be entirely accurate as they are experimental in nature. Use the information in this page at your own discretion and risk.