Abstract

The project introduces a portable ultrasound treatment device for low fire for pain management, which integrates ultrasound sonar technology with an Arduino-based control system. The unit produces low-frequency ultrasound waves to stimulate deep tissue, relieve pain and increase muscle recycling. It has a Bluetooth connection, which allows wireless control via a mobile app for custom therapy sessions. An LCD screen provides real-time response to the level of intensity, frequency settings and sessions. Compact and portable designs ensure ease of use for home-based or clinical applications. By taking advantage of Arduino for accurate wave modulation, the system optimizes medical efficiency while maintaining safety standards. This innovation provides a cheap, non-invasive alternative for handling chronic pain, muscle stiffness and arthritis, making ultrasound therapy more accessible to patients and health professionals. Portable ultrasound therapy with low existence represents an innovative and effective method of pain management and provides patients with a practical alternative for incinerators. As technology promotes, units are expected to design, access and strengthen and promote, paving the way for widespread adoption and better clinical consequences for a diverse range of patients. By enhancing the usability and affordability of ultrasound therapy, healthcare providers can offer tailored treatment options that improve patient outcomes and satisfaction.  As a result, this approach not only addresses immediate pain relief but also encourages long-term recovery and rehabilitation. Ultimately, the integration of portable ultrasound therapy into routine practice could transform patient care, making advanced treatment accessible to those in need.

Keywords

Portable ultrasound therapy, Low-frequency ultrasound, Pain management, Non-invasive treatment, Musculoskeletal pain,

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