Product Images Leafpro Cbdmed Oil T-fs Qd 20%

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Product Label Images

The following 2 images provide visual information about the product associated with Leafpro Cbdmed Oil T-fs Qd 20% NDC 73674-024 by Leafmed Gmbh, 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.

Principal display panel_Label 10ml - leafPro CBDmed Oil T FS QD 20 Etikett 30x72 US

Principal display panel_Label 10ml - leafPro CBDmed Oil T FS QD 20 Etikett 30x72 US

leafPharma Inc. distributes a 10 ml/0.34fl oz Cannabidiol oil for oral use that may have pain-relieving, anti-inflammatory, soothing and relaxing effects. The oil comes with directions on the carton and should be read before use. It is stored at a temperature of T-FS QD 20%. The NDC number is 73674-024-01.*

Principal display panel_Carton 10ml - leafPro CBDmed Oil T FS QD 20 FS 28x28x95 US

Principal display panel_Carton 10ml - leafPro CBDmed Oil T FS QD 20 FS 28x28x95 US

leafPro CBDmed Oil is a cannabidiol oil that contains 20% CBD. It provides anti-inflammatory, analgesic, soothing and relaxing effects. The oil is free of alcohol, sugar, dyes, lactose and gluten, and is vegan. It contains full-spectrum hemp extract (THC-free), MCT coconut oil and silicon dioxide as inactive ingredients. The recommended dosage is 1-3 drops for adults and children over 12 years of age. It should be taken orally by placing the drops under the tongue and holding for as long as possible before swallowing. The recommended daily dose should not exceed 400mg CBD (40 drops). If pregnant, breastfeeding or suffering from liver disease, depression, or neural disease, users should seek a doctor's advice before using this product. If any side effects not listed occur, users have to seek medical assistance immediately.*

* 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.