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KongNet: A Multi-headed Deep Learning Model for Detection and Classification of Nuclei in Histopathology Images

About

Accurate detection and classification of nuclei in histopathology images are critical for diagnostic and research applications. We present KongNet, a multi-headed deep learning architecture featuring a shared encoder and parallel, cell-type-specialised decoders. Through multi-task learning, each decoder jointly predicts nuclei centroids, segmentation masks, and contours, aided by Spatial and Channel Squeeze-and-Excitation (SCSE) attention modules and a composite loss function. We validate KongNet in three Grand Challenges. The proposed model achieved first place on track 1 and second place on track 2 during the MONKEY Challenge. Its lightweight variant (KongNet-Det) secured first place in the 2025 MIDOG Challenge. KongNet pre-trained on the MONKEY dataset and fine-tuned on the PUMA dataset ranked among the top three in the PUMA Challenge without further optimisation. Furthermore, KongNet established state-of-the-art performance on the publicly available PanNuke and CoNIC datasets. Our results demonstrate that the specialised multi-decoder design is highly effective for nuclei detection and classification across diverse tissue and stain types. The pre-trained model weights along with the inference code have been publicly released to support future research.

Jiaqi Lv, Esha Sadia Nasir, Kesi Xu, Mostafa Jahanifar, Brinder Singh Chohan, Behnaz Elhaminia, Shan E Ahmed Raza• 2025

Related benchmarks

TaskDatasetResultRank
Nuclei ClassificationPanNuke
Neoplastic F1 Score71
24
Nucleus detection and classificationPUMA
F1 (Lymphocytes)80.7
19
Nuclei Detection and ClassificationPUMA Challenge Track 2 (test)
Average F128.04
10
Object DetectionMONKEY Challenge 1.0 (test)
Inflammatory Cells FROC39.3
8
Nuclei DetectionMONKEY Challenge (preliminary)
FROC (Inflammatory Cells)39.72
8
Nuclei Detection and ClassificationCoNIC (test)
Neu Score51
6
DetectionMIDOG Challenge Track 1 2025 (Preliminary Leaderboard)
F1 Score81.47
5
Mitosis DetectionMIDOG Challenge Track 1 Final Leaderboard 2025 (test)
F1 Score74
5
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