Bismuth Subsalicylate 262 Mg Tablet, Chewable
Product Images NDC 68788-4116

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This gallery contains 2 technical images submitted to the FDA as part of the official labeling for Bismuth Subsalicylate 262 Mg (NDC 68788-4116). Unlike standard consumer photos, these assets often include clinical data figures, molecular chemical structures, and official manufacturer packaging layouts.

As provided by Preferred Pharmaceuticals Inc., these visuals offer a comprehensive scientific overview of the product's physical and chemical identity, aiding pharmacists and researchers in product verification and study.

FDA Label Image

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2e92d053 1618 143b E054 00144ff8d46c
This is a chewable tablet containing 262mg of Bismuth Subsalicylate. Bismuth Subsalicylate is commonly used to relieve symptoms of heartburn, indigestion, upset stomach, nausea, and diarrhea. It works by coating the stomach lining and reducing irritation. It is important to follow the recommended dosage and usage instructions provided by a healthcare professional.*
FDA Label Image

Bismuth Subsalicylate Tablets 262mg (369618029033 Bismuth Subsalicylate Chew Tablets 262 mg)

Bismuth Subsalicylate Tablets 262mg (369618029033 Bismuth Subsalicylate Chew Tablets 262 mg)
This text is a description of Bismuth Subsalicylate tablets, a generic alternative to Pepto-Bismol. Each tablet contains 262mg of the active ingredient Bismuth subsalicylate, providing relief for upset stomach and diarrhea. The tablets are round, pink, and imprinted with "AP 045". The manufacturer is Reliable 1 Labs. LLC and the tablets should be stored at 15° to 30°C (59° to 86°F). The text also includes warnings about the product not being suitable for children and teenagers recovering from certain illnesses. Additionally, it provides information on the packaging size, expiration date, and lot number of the product.*

* These product label images have been analyzed using experimental machine learning. Please verify findings with the primary label text.