Product Images Metformin Hydrochloride

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Product Label Images

The following 3 images provide visual information about the product associated with Metformin Hydrochloride NDC 71205-783 by Proficient Rx Lp, 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.

Chemical Structure - metformin 01

Chemical Structure - metformin 01

71205-784-60 - metformin 02

71205-784-60 - metformin 02

This is a description of Metformin HCI 500mg tablets. The tablets have a blackberry flavor, are white to off-white, round, biconvex, and beveled edge film coated with 'SG’ on one side and '105' on the other side. The medication is manufactured by ScieGen Pharmaceuticals, Inc. and is packaged by proficient Rx LP. The tablets come in a bottle of 60, and the product ID is QM078460. The drug is for Rx-only and should be stored at 20°-25°C (68°-77°F). The text also includes lot numbers, expiration date and other product-related numbers, but no other relevant information.*

71205-783-90 - metformin 04

71205-783-90 - metformin 04

This is the description of Metformin HCI 1000mg tablets manufactured by ScieGen Pharmaceuticals, Inc. The tablets are oval-shaped, white to off-white in color, and film-coated. They are debossed on one side with 'S' on the left side of bisect and 'G' on the right side of bisect, while the other side is debossed with '1' on the left side and '07' on the right side of bisect. The tablets come in a bottle containing 90 pieces and are intended for prescription only. The tablets should be stored within 20°-25°C (68°-77°F), in a place unreachable to children. The product is packaged by Proficient Rx LP, Thousand Oaks, CA 81320, and has lot number 00000 and expiration date 00/00/00, with a unique serial number marked as SN# MASTER, and the NDC code is 71205-783-90.*

* 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.