Product Images Agaricus Muscarius

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Product Label Images

The following 2 images provide visual information about the product associated with Agaricus Muscarius NDC 63545-774 by Hahnemann Laboratories, 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.

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Hahnemann Labs Inc sells homeopathic medicine called AGARICUS MUSCARIUS LM1 in pellet form. The product is made with sucrose and is intended for traditional homeopathic uses such as treating headaches. The label cautions pregnant or breastfeeding women to seek the advice of a health professional before use, and if symptoms persist beyond three days, to consult a health professional. The directions recommend taking 5 pellets orally once or as instructed by a health professional. For any further questions, the phone number to contact Hahnemann Labs Inc is 888-427-6422.*

Agaricus muscarius LM1 30g - Agaricus muscarius LM1 30g

Agaricus muscarius LM1 30g - Agaricus muscarius  LM1 30g

Hahnemann Labs Inc is providing Agaricus Muscarius in LM1 potency which is a traditional homeopathic medicine used for relieving headaches. The medicine comes as a 30g net weight of pellets consisting of active ingredient and inactive ingredient such as sucrose. The users are advised to take 5 pellets orally once, according to the directions of a health professional. However, if the headache symptoms persist beyond 3 days, users are advised to consult with a health professional. The product comes with warnings such as not to use it during pregnancy or breastfeeding without consulting a health professional first and to keep the product out of reach of children. Further assistance can be obtained by calling the toll-free number provided.*

* 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.