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| Exchange | NASDAQ |
|---|---|
| CurrencyCode | USD |
| ISIN | VGG205281089 |
| Sector | Healthcare |
| Industry | Medical Care Facilities |
| Market Cap | None |
|---|---|
| PE Ratio | nan |
| Target Price | nan |
| Dividend Yield | nan% |
| Beta | nan |
Charming Medical Limited, through its subsidiaries, engage in the provision of beauty, wellness, and postpartum services under the Beauty Lab brand name in Hong Kong. Its services includes womb-warming therapy, BTS (Beauty, Tailor-made, Slim) pelvic detox therapy, agarwood moxibustion therapy, traditional Chinese medicine (TCM)-inspired prenatal massage, and Indonesian traditional abdominal binding. The company also provides TCM-inspired supplements products, which includes Beauty Lab home herbal uterine care patch, probiotic intimate wash, and Yin nourishing pill sets; and beauty products, including ginseng soothing anti-allergy moisturizing wash for skin issues, and scalp health. In addition, it offers consultancy services to provide TCM-inspired therapy technical training and dietary therapy training to other well-established and reputable beauty salons, massage centers, and similar institutions. Further, the company's products are used for the treatment of alleviating premenstrual syndrome, menstrual irregularities, dysmenorrhea, leukorrhea, pelvic inflammatory disease, menopausal care, breast health, uterine health, enhance physical weakness, balance endocrine functions, and other common women's health issues. it operates wellness centres. The company was founded in 2016 and is headquartered in Causeway Bay, Hong Kong.
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