Fidelity-Derived Quantum Dissimilarity-Enhanced k -Nearest Neighbor Algorithm for Arterial Hypertension Prediction
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We present a quantum-enhanced version of the classic k -Nearest Neighbors ( k NN) classification algorithm, applied to the prediction of arterial hypertension. The traditional Euclidean distance metric of the k NN algorithm is replaced with a Fidelity-derived quantum dissimilarity measure to evaluate the similarity between data samples. We map classical real-world clinical and ECG-derived data features into quantum states via the Dense-Angle Encoding, which efficiently utilizes parameterized rotation gates to pack multiple features into minimal qubits while maintaining pure states. We evaluate the performance of the dissimilarity measure using both the noiseless state vector Simulator and the IBM Qiskit Estimator primitives. The quantum circuit demonstrates robust predictive capabilities comparable to the classical model. While it does not claim computational supremacy over the classical baseline, the framework proves that fidelity-based similarity is a physically meaningful and efficient approach for hybrid quantum-classical classification.