Cyclease Cramps Tablet
Product Images NDC 0220-9078

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 Cyclease Cramps (NDC 0220-9078). Unlike standard consumer photos, these assets often include clinical data figures, molecular chemical structures, and official manufacturer packaging layouts.

As provided by Laboratoires Boiron, 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

Cyclease Cramps Etu.1fu8 05.2020

Cyclease Cramps Etu.1fu8 05.2020
This is a drug facts sheet for homeopathic medicine that aims to relieve menstrual cramps. The active ingredients include Cimiclfuga racemosa 6C HPUS, Colocynthis 6C HPUS, and Magnesia phosphorica 6C HPUS. These ingredients temporarily relieve the symptoms associated with menstrual cramps such as discomfort and minor aches and pains. The product has warnings, directions, and other information provided, such as asking a health professional before use if pregnant or breastfeeding, and not exceeding 12 doses per day. The sheet is intended for adults and children 12 years and older. It also notes that the efficacy of the medicine is based on traditional homeopathic practice, and has not been evaluated by FDA. It is made in France, distributed by Boiron Inc., and requires no food or water to be taken.*
FDA Label Image

Box (Cyclease Cramp)

Box (Cyclease Cramp)
This is a description of "Cyclease® Cramp", a non-drowsy homeopathic medication used for menstrual cramps. It contains active ingredients that are listed in the text along with directions for use. There is also information about the Boiron Promise, which is a guarantee of customer satisfaction. However, the text is difficult to read due to errors that have affected some of the words.*

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