DocumentCode :
2357797
Title :
Data compression for implantable medical devices
Author :
Koyrakh, La
Author_Institution :
St. Jude Med., St. Paul, MN
fYear :
2008
fDate :
14-17 Sept. 2008
Firstpage :
417
Lastpage :
420
Abstract :
Implantable devices have limited memory, computational and battery power resources, while collecting, processing and transmitting out information from potentially many sensors. These limitations require that information within the devices be efficiently compressed. Such data compression presents a challenging task, as it must provide high fidelity of the waveform reproduction and high compression ratios on limited size data frames. Also, it must efficiently run on ultra low power hardware, and allow flexible configuration, based on the type of data to be compressed. The new compression algorithm was implemented as a bit accurate Matlab simulation, consisting of the following major steps: 1. Integer wavelet transform. 2. Quantization coupled with filtration. Two selectable quantization schemes could be utilized based on the signal properties: linear and dead-zone. Data filtration is performed on bit boundaries, which simplifies hardware implementation. The filtration thresholds are made different in different wavelet sub-bands, controlled by a single parameter. 3. Original adaptive data encoding. Our approach only requires basic logical operations such as bit counters and shifts, and is highly optimized for implementation in implantable device hardware. For high reliability each compressed data frame contains all information needed for decompression. The algorithm was applied to data from the PhysioNet ECG compression test database. 40 ECG frames of 1024 samples from 4 patients were sampled at 250 Hz, 12 bit resolution, and compressed with distortions below 8%. Compression ratios were 9.3plusmn2.5, consistently exceeding 85% of the theoretical limit based on bit entropy for each individual data frame. It is concluded The compression algorithm is efficient on data collected by implantable devices, and could be used in various applications in both microprocessor and ASIC implementations, helping to reduce memory requirements and the battery energy spent on the informat- - ion transmission to and from the implantable device.
Keywords :
application specific integrated circuits; biomedical electronics; biomedical equipment; data compression; electrocardiography; encoding; low-power electronics; medical signal processing; microprocessor chips; quantisation (signal); wavelet transforms; ASIC implementation; Matlab simulation; PhysioNet ECG compression test database; adaptive data encoding; battery energy; battery power resource; data compression algorithm implementation; data filtration; frequency 250 Hz; implantable medical device hardware; information transmission; integer wavelet transform; microprocessor; quantization scheme; ultra low power hardware; waveform reproduction; Batteries; Compression algorithms; Data compression; Electrocardiography; Encoding; Filtration; Hardware; Implantable biomedical devices; Quantization; Wavelet transforms;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computers in Cardiology, 2008
Conference_Location :
Bologna
ISSN :
0276-6547
Print_ISBN :
978-1-4244-3706-1
Type :
conf
DOI :
10.1109/CIC.2008.4749067
Filename :
4749067
Link To Document :
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