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Abstract Different from old way in which computer simply intimulates artificial ECG diagnosis before, ECG scatterplot makes a breakthrough by expanding the
horizon of cardiac rhythm from ECG waveform to phase space. With the sectional view of strange attractor, it visually reflects the diagnostic characteristics
of different arrhythmias from ECG big data. By combining ECG scatterplot technique with artificial intelligence, wearable ECG equipment and block chain
technology, ECG big data analysis will develop in the direction of intelligentization and facilitation, and provide more protections for patients/users
information safety in remote ECG monitoring.
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