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JACIII Vol.29 No.6 pp. 1329-1341
doi: 10.20965/jaciii.2025.p1329
(2025)

Research Paper:

A Fast Depression Detection Method Based on AKRCC-KNN Model

Jing Kan* ORCID Icon, Wei Tong* ORCID Icon, Bichen Wu* ORCID Icon, Yongchun Ma** ORCID Icon, and Kewei Chen***,† ORCID Icon

*Advanced Institute of Information Technology (AIIT), Peking University
Hangzhouwan Wisdom Valley, Xiaoshan, Hangzhou, Zhejiang 310000, China

**Tongde Hospital of Zhejiang Province
234 Gucui Road, Xihu, Hangzhou, Zhejiang 310012, China

***School of Mechanical Engineering and Mechanics, Ningbo University
No.818 Fenghua Road, Jiangbei, Ningbo, Zhejiang 315211, China

Corresponding author

Received:
December 26, 2024
Accepted:
June 23, 2025
Published:
November 20, 2025
Keywords:
EEG signal, depression detection, functional connectivity, feature selection, KNN
Abstract

In order to proceed the fast detection of depression with EEG (electroencephalogram) signal, this study proposed a so-called AKRCC-KNN model for automatic and accurate diagnosis. Based on the multi-channel EEG signal with pre-processing, there is a novel approach focusing on the feature extraction, in which the PLI (phase lag index) of EEG signals is calculated as the feature; moreover, the feature selection algorithm (so-called AKRCC) is innovatively integrated with AKRC (altered Kendall’s rank correlation coefficient) method for feature re-arrangement and convergence determination for feature selection, in order to improve the selective feature’s accuracy with limited computation expense. Hence the entire process of detection of depression with enhanced performance is listed as follows. Firstly, the PLI of EEG signals is computed to obtain their functional connectivity networks. AKRCC algorithm is then applied to rank PLI matrix elements by their discriminative power and determine optimal feature dimensionality through classification accuracy convergence monitoring. Finally, the selected multidimensional features are input into a KNN classifier for automatic classification. Extensive experiments on the MODMA dataset (24 major depression disorder patients, 29 healthy controls) demonstrate the model’s superior performance. With 1-second full-band EEG features, the AKRCC-KNN model achieves a state-of-the-art identification accuracy of 97.65% (specificity: 96.95%, sensitivity: 98.54%), surpassing existing methods. This indicates that the proposed depression detection model in this paper can achieve intelligent and rapid depression detection, providing an efficient, accurate, and diverse solution for clinical depression detection.

Cite this article as:
J. Kan, W. Tong, B. Wu, Y. Ma, and K. Chen, “A Fast Depression Detection Method Based on AKRCC-KNN Model,” J. Adv. Comput. Intell. Intell. Inform., Vol.29 No.6, pp. 1329-1341, 2025.
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Last updated on Nov. 19, 2025