Pengfei Cao | Data Science and Deep Learning | Research Excellence Award

Mr. Pengfei Cao | Data Science and Deep Learning | Research Excellence Award

Associate Professor at Lanzhou University | China

Mr. Pengfei Cao, Associate Professor and Doctoral Supervisor at Lanzhou University, is a leading researcher in intelligent sensing and vertical domain-specific large AI models. With a Ph.D. in Radio Physics and international experience at Heidelberg University, he has published over fifty high-impact papers spanning terahertz metamaterials, graphene-based devices, nanoparticle coupling mechanisms, solar absorption nanofluids, cancer prediction, and AI-enhanced medical diagnostics. He holds multiple invention and utility model patents, several commercialized, along with software copyrights and a provincial teaching achievement award. His professional service includes guest editing SCI journals, governmental evaluation roles, and expert advisory positions supporting digital transformation and innovation.

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Featured Publications

Zhixiang Wang | Data Science and Deep Learning | Best Researcher Award

Dr. Zhixiang Wang | Data Science and Deep Learning | Best Researcher Award

Research Intern at Beijing Friendship Hospital | China

Dr. Zhixiang Wang is a distinguished researcher in Clinical Data Science with a strong background in Artificial Intelligence, Medical Imaging, and Machine Learning. A PhD graduate from Maastricht University under the mentorship of Professor Andre Dekker, Wang has demonstrated a consistent commitment to bridging computational innovation with clinical application. His prolific research output spans over 29 internationally recognized journal publications, reflecting expertise in multimodal imaging, large language models, and radiomics. His representative works include Performance of GPT-4 for Automated Prostate Biopsy Decision-Making Based on mpMRI: A Multi-Center Evidence Study, Radiomics and Dosiomics Signature from Whole Lung Predicts Radiation Pneumonitis: A Model Development Study with Prospective External Validation and Decision-Curve Analysis, and Computed Tomography and Radiation Dose Images-Based Deep-Learning Model for Predicting Radiation Pneumonitis in Lung Cancer Patients After Radiation Therapy. He further contributed to Development and Performance of a Large Language Model for the Quality Evaluation of Multi-Language Medical Imaging Guidelines and Consensus, A Radiomics Nomogram for the Ultrasound-Based Evaluation of Central Cervical Lymph Node Metastasis in Papillary Thyroid Carcinoma, An Applicable Machine Learning Model Based on Preoperative Examinations Predicts Histology, Stage, and Grade for Endometrial Cancer, and Generation of Synthetic Ground Glass Nodules Using Generative Adversarial Networks (GANs). His studies such as CycleGAN Clinical Image Augmentation Based on Mask Self-Attention Mechanism and GAN-Based One-Dimensional Medical Data Augmentation highlight his skill in generative models for data enhancement. Zhixiang Wang’s research also explores Enhancing Diagnostic Accuracy and Efficiency with GPT-4-Generated Structured Reports and Assessing the Role of GPT-4 in Thyroid Ultrasound Diagnosis and Treatment Recommendations: Enhancing Interpretability with a Chain of Thought Approach. With extensive experience in AI-driven diagnostic imaging, multimodal model development, and LLM fine-tuning for clinical reporting, Wang continues to lead innovation at the intersection of data science and precision medicine, contributing impactful advancements toward intelligent, interpretable, and efficient clinical decision-support systems.

Profile: Scopus

Featured Publications:

Wang, Z., Zhang, Z., Luo, T., Yan, M., & Dekker, A. (2026). A cross-modal fine-grained retrieval method based on LAGC and contrastive learning. Expert Systems with Applications.

Wang, Z., Sun, J., Liu, H., & Chen, Y. (2026). Experience-guided multi-agent interpretable framework for radiology report summarization. Computer Methods and Programs in Biomedicine.

Wang, Z., Li, J., Feng, Y., & Qian, L. (2025). Machine learning model based on preoperative MRI and clinical data for predicting pancreatic fistula after pancreaticoduodenectomy. BMC Medical Imaging.

Shi, M. J., Wang, Z. X., & Wang, Z. C. (2025). Performance of GPT-4 for automated prostate biopsy decision-making based on mpMRI: A multi-center evidence study. Military Medical Research.