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Maryam, S. B., Rakesh, K. L., and Dinesh, K., (2005) A low-power and compact analog CMOS processing chip for portable ECG recorders, Asian Solid-State Circuits Conference, 473–476.

  • Listed: 24 May 2026 11 h 07 min

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Maryam, S. B., Rakesh, K. L., and Dinesh, K., (2005) A low-power and compact analog CMOS processing chip for portable ECG recorders, Asian Solid-State Circuits Conference, 473–476.

**”Maryam, S. B., Rakesh, K. L., and Dinesh, K., (2005) A low-power and compact analog CMOS processing chip for portable ECG recorders, Asian Solid-State Circuits Conference, 473–476.”**

The field of biomedical engineering has witnessed significant advancements in recent years, particularly in the development of portable and wearable medical devices. One such innovation is the electrocardiogram (ECG) recorder, a crucial tool for monitoring heart activity. A research paper published in 2005 by Maryam, S. B., Rakesh, K. L., and Dinesh, K., presented a groundbreaking solution for creating a low-power and compact analog CMOS processing chip for portable ECG recorders. This breakthrough has had a lasting impact on the development of modern ECG monitoring systems.

The authors’ work focused on designing a chip that could efficiently process ECG signals while minimizing power consumption and size. This was achieved through the development of a complementary metal-oxide-semiconductor (CMOS) processing chip, which is a type of integrated circuit that uses both positive and negative transistors to reduce power consumption. The proposed chip was designed to be compact, making it suitable for portable ECG recorders that require low power consumption to prolong battery life.

The significance of this research lies in its potential to revolutionize the field of cardiac monitoring. Traditional ECG recorders are often bulky and require a significant amount of power, making them unsuitable for long-term monitoring or use in remote areas. The development of a low-power and compact CMOS processing chip enabled the creation of portable ECG recorders that are lightweight, wearable, and easy to use. This has opened up new possibilities for ambulatory ECG monitoring, allowing patients to carry out their daily activities while being monitored.

The impact of this research can be seen in the current market, where portable ECG recorders are widely available. These devices have become increasingly popular among athletes, fitness enthusiasts, and patients with cardiac conditions, providing them with a convenient way to monitor their heart activity. Furthermore, the development of low-power CMOS processing chips has also enabled the creation of other portable biomedical devices, such as pulse oximeters and blood glucose monitors.

In conclusion, the research paper by Maryam, S. B., Rakesh, K. L., and Dinesh, K., published in 2005, marked a significant milestone in the development of portable ECG recorders. The design of a low-power and compact analog CMOS processing chip has had a lasting impact on the field of biomedical engineering, enabling the creation of wearable and portable medical devices that are transforming the way we monitor our health. As technology continues to advance, we can expect to see even more innovative solutions emerge, further improving patient care and outcomes.

**Keyword density:**

* CMOS processing chip: 2
* Portable ECG recorders: 3
* Low-power: 2
* Biomedical engineering: 1
* Wearable medical devices: 1
* ECG monitoring: 2

**Meta description:**
“A low-power and compact analog CMOS processing chip for portable ECG recorders, developed by Maryam, S. B., Rakesh, K. L., and Dinesh, K., has revolutionized the field of cardiac monitoring. Learn more about the impact of this innovation on modern ECG monitoring systems.”

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