Be Gone Stomach Disorders
Product Images NDC 68428-732

View Photos of Packaging, Regulatory Labels, and Product Appearance

Product Visual Gallery

This gallery contains 2 technical images submitted to the FDA as part of the official labeling for Be Gone Stomach Disorders (NDC 68428-732). Unlike standard consumer photos, these assets often include clinical data figures, molecular chemical structures, and official manufacturer packaging layouts.

As provided by Washington Homeopathic Products, 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

Stomachdisorders Box 062018

Stomachdisorders Box 062018
Be gone Stomach Disorders is a natural homeopathic formula that eases nausea, indigestion, flatulence, and sour/bitter taste in the mouth without any side-effects. It contains Carbo veg 6¢, Chelone glabra 6c, Dulcamara 6¢, and Hydrastis 6¢ as homeopathic ingredients. However, it is advised to consult a licensed practitioner, keep it away from children, and avoid use for more than 7 days or during pregnancy or nursing. It is made by Washington Homeopathic Products, a trusted name in natural pharmacy since 1873. For more information, visit www.BeGone.com.*
FDA Label Image

Stomachdisorders Label 062018

Stomachdisorders Label 062018
This is a product made by a company called Natural Care, which claims to help with stomach disorders such as indigestion, flatulence, nausea, and sour/bitter taste. The product consists of homeopathic medicine with ingredients such as Carbo veg, Chelone glabra, Dulcamara, and Hydrastis, and can be taken by adults and children according to the directions on the packaging. The product comes in a 10z container and if the seal with the WHP logo is broken, it should not be used. If symptoms worsen or persist for more than 7 days or if pregnant or nursing, a licensed practitioner should be consulted.*

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