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PediatricsGPT: A Chinese Large Language Model for Pediatric Applications


Основні поняття
This paper introduces PediatricsGPT, a new large language model specifically trained on a massive dataset of Chinese pediatric medical texts to address the shortage of pediatricians and improve healthcare access in China.
Анотація
  • Bibliographic Information: Yang, D., Wei, J., Xiao, D., Wang, S., Wu, T., Li, G., ... & Zhang, L. (2024). PediatricsGPT: Large Language Models as Chinese Medical Assistants for Pediatric Applications. Advances in Neural Information Processing Systems, 37.
  • Research Objective: This paper introduces PediatricsGPT, a large language model (LLM) designed specifically for pediatric applications in the context of Chinese medicine. The authors aim to address the limitations of existing LLMs in pediatrics, particularly the lack of specialized training data and robust training procedures.
  • Methodology: The researchers developed PedCorpus, a high-quality dataset of over 300,000 multi-task instructions derived from pediatric textbooks, guidelines, knowledge graphs, and real doctor-patient conversations. They then trained PediatricsGPT using a systematic pipeline involving Continuous Pre-Training (CPT), full-parameter Supervised Fine-Tuning (SFT), human preference alignment, and parameter-efficient secondary SFT. A novel hybrid instruction pre-training mechanism was introduced in CPT to bridge the gap between inherent and injected medical knowledge. Additionally, a Direct Following Preference Optimization (DFPO) technique was employed to align the model's responses with human preferences.
  • Key Findings: PediatricsGPT consistently outperformed existing Chinese medical LLMs and baselines across three pediatric medical benchmarks: Knowledge Question-Answering (MedKQ&A), Evidence-based Diagnosis (EviDiag), and Treatment Recommendation (TreRecom). The model demonstrated significant improvements in metrics such as ROUGE, BLEU, GLEU, and Distinct scores. Evaluations by both GPT-4 and human doctors confirmed the model's superior performance in terms of usefulness, correctness, consistency, and smoothness of responses.
  • Main Conclusions: The study highlights the potential of LLMs like PediatricsGPT to address the shortage of pediatricians and improve healthcare access, particularly in resource-constrained settings. The authors emphasize the importance of specialized training data, robust training procedures, and human preference alignment in developing effective medical LLMs.
  • Significance: This research significantly contributes to the field of LLMs in healthcare by presenting a novel model specifically designed for pediatric applications in Chinese medicine. The development of PedCorpus and the systematic training pipeline employed for PediatricsGPT offer valuable insights for future research in this domain.
  • Limitations and Future Research: While PediatricsGPT shows promise, the authors acknowledge limitations related to potential security risks and the model's current language restriction to Chinese. Future research could explore methods to enhance the model's security and expand its language capabilities to benefit a wider audience.
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Статистика
PedCorpus contains over 300,000 multi-task instructions. The researchers used Baichuan2-Base models in two versions, with 7 and 13 billion parameters. PediatricsGPT-7B showed a 3.53% and 4.44% improvement on ROUGE-L and GLEU metrics, respectively, compared to HuatuoGPT-II in the EviDiag task. The MCE strategy with three specific experts achieved a reasonable performance trade-off across three tasks using only 0.95% trainable parameters.
Цитати
"PediatricsGPT is developed on a systematic training pipeline that includes Continuous Pre-Training (CPT), full-parameter SFT, human preference alignment, and parameter-efficient secondary SFT." "In this case, we introduce a hybrid instruction pre-training mechanism in CPT to bridge the capability weakening due to corpus format discrepancies between the internal and injected medical knowledge of foundation models, facilitating knowledge accumulation and extension." "Despite impressive improvements achieved by RLHF-based approaches [53, 55], challenges remain due to unstable reward modelling and significant computational costs [39, 58]."

Ключові висновки, отримані з

by Dingkang Yan... о arxiv.org 11-05-2024

https://arxiv.org/pdf/2405.19266.pdf
PediatricsGPT: Large Language Models as Chinese Medical Assistants for Pediatric Applications

Глибші Запити

How can the development and deployment of specialized LLMs like PediatricsGPT be balanced with the need to address potential biases and ethical concerns in healthcare AI?

Balancing the development and deployment of specialized LLMs like PediatricsGPT with the need to address potential biases and ethical concerns in healthcare AI is a multifaceted challenge requiring a multi-pronged approach: 1. Data Diversity and Bias Mitigation: Representative Datasets: Training datasets must be carefully curated to be representative of diverse patient populations, encompassing variations in age, gender, ethnicity, socioeconomic background, and geographic location. This minimizes the risk of the LLM inheriting and perpetuating existing healthcare disparities. Bias Detection and Correction: Implement robust bias detection and correction mechanisms throughout the LLM's development lifecycle. This includes using statistical techniques to identify and mitigate biases in the training data, as well as ongoing monitoring and evaluation of the LLM's outputs for potential bias. 2. Transparency and Explainability: Interpretable Models: Strive for LLM architectures and training methodologies that enhance transparency and explainability. This allows healthcare professionals to understand the rationale behind the LLM's recommendations and identify potential biases or errors. Audit Trails: Maintain comprehensive audit trails of the LLM's decision-making process, including the data used, the algorithms employed, and the reasoning behind its outputs. This facilitates accountability and allows for retrospective analysis of potential biases. 3. Human Oversight and Collaboration: Clinician-in-the-Loop: LLMs should be positioned as tools to augment, not replace, healthcare professionals. Maintaining a "clinician-in-the-loop" approach ensures that human judgment and expertise remain central to the decision-making process. Continuous Monitoring and Feedback: Establish mechanisms for healthcare professionals to provide feedback on the LLM's performance, identify potential biases, and contribute to ongoing model improvement. 4. Ethical Guidelines and Regulations: Ethical Frameworks: Develop and adhere to clear ethical guidelines and principles for the development and deployment of healthcare AI, addressing issues such as patient autonomy, data privacy, informed consent, and algorithmic fairness. Regulatory Oversight: Advocate for appropriate regulatory oversight of healthcare AI, ensuring that LLMs like PediatricsGPT meet rigorous safety, efficacy, and ethical standards before widespread deployment.

Could the reliance on LLMs for medical advice inadvertently lead to a decrease in critical thinking skills and diagnostic acumen among healthcare professionals?

The potential impact of LLMs on the critical thinking skills and diagnostic acumen of healthcare professionals is a valid concern. While LLMs offer numerous benefits, over-reliance on them without appropriate safeguards could lead to: Deskilling: If healthcare professionals become overly dependent on LLMs for routine tasks and decision-making, their own critical thinking skills and clinical judgment may atrophy over time. Automation Bias: There's a risk of healthcare professionals developing "automation bias," where they become overly trusting of the LLM's recommendations without critically evaluating the information or considering alternative perspectives. Reduced Clinical Experience: If LLMs handle a significant portion of data analysis and diagnosis, healthcare professionals may have fewer opportunities to encounter and learn from complex or atypical cases, potentially hindering their diagnostic acumen. Mitigating these risks requires: Emphasis on Foundational Knowledge: Medical education should continue to prioritize strong foundational knowledge, critical thinking skills, and clinical reasoning abilities. LLM as a Tool, Not a Crutch: Healthcare professionals should be trained to use LLMs as tools to augment their decision-making, not as substitutes for their own expertise. Critical Evaluation of LLM Outputs: Encourage healthcare professionals to critically evaluate the LLM's recommendations, considering the limitations of the technology and the specific context of each patient. Lifelong Learning: Promote a culture of continuous learning and professional development among healthcare professionals, ensuring they stay abreast of the latest advancements in both medicine and AI.

What are the broader societal implications of using AI-powered medical assistants, particularly in terms of patient autonomy, trust in healthcare systems, and the evolving doctor-patient relationship?

The use of AI-powered medical assistants like PediatricsGPT has profound societal implications: 1. Patient Autonomy: Informed Consent: Patients must be fully informed about the use of AI in their care and given the opportunity to provide informed consent. This includes understanding the potential benefits, risks, and limitations of AI-powered medical assistants. Data Privacy and Security: Robust data privacy and security measures are paramount to protect sensitive patient information used by AI systems. Patients need assurance that their data is handled responsibly and ethically. Right to Choose: Patients should retain the right to choose whether or not AI is involved in their care. They should have the option to opt-out of AI-driven recommendations or seek a second opinion from a human healthcare professional. 2. Trust in Healthcare Systems: Transparency and Accountability: Building trust in AI-powered healthcare systems requires transparency about how these systems work, how decisions are made, and how potential biases are addressed. Clear lines of accountability are essential if errors occur. Equitable Access: Efforts must be made to ensure equitable access to AI-powered healthcare, regardless of socioeconomic status, geographic location, or other factors. This prevents exacerbating existing healthcare disparities. 3. Evolving Doctor-Patient Relationship: Shifting Roles: AI-powered medical assistants may shift the dynamics of the doctor-patient relationship. Healthcare professionals can leverage AI to handle routine tasks, freeing up time for more meaningful interactions with patients. Enhanced Communication: AI can facilitate communication between doctors and patients by providing personalized information, translating medical jargon, and offering decision support tools. Maintaining Human Connection: It's crucial to preserve the human connection in healthcare. While AI can provide valuable insights, it's the empathy, compassion, and understanding of human healthcare professionals that are essential for building trust and delivering patient-centered care.
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