A team of researchers from Lehigh University, Massachusetts General Hospital, and Harvard Medical School recently performed a thorough evaluation of GPT-4V, a state-of-the-art multimodal language model, particularly in Visual Question Answering tasks. The assessment aimed to determine the model’s overall efficiency and performance in handling complex queries requiring text and visual inputs. The study’s findings reveal the potential of GPT-4V for enhancing natural language processing and computer vision applications.
Based on the latest research, the current version of GPT-4V is not suitable for practical medical diagnostics due to its unreliable and suboptimal responses. GPT-4V heavily relies on textual input, which often results in inaccuracies. The study does highlight that GPT-4V can provide educational support and can produce accurate results for different question types and levels of complexity. The study also emphasizes that more precise and concise responses are needed for GPT-4V to be more effective.
The approach underscores the multimodal nature of medicine, where clinicians integrate diverse data types, including medical images, clinical notes, lab results, electronic health records, and genomics. While various AI models have demonstrated promise in biomedical applications, many are tailored to specific data types or tasks. It also highlights the potential of ChatGPT in offering valuable insights to patients and doctors, exemplifying a case where it accurately diagnosed a patient after multiple medical professionals couldn’t.
The GPT-4V evaluation entails utilizing pathology and radiology datasets encompassing eleven modalities and fifteen objects of interest, where questions are posed alongside relevant images. Textual prompts are carefully designed to guide GPT-4V in integrating visual and textual information effectively. The evaluation employs GPT-4V’s dedicated chat interface, initiating separate chat sessions for each QA case to ensure impartial results. Performance is quantified using the accuracy metric, encompassing closed-ended and open-ended questions.
Experiments involving GPT-4V within the medical domain’s Visual Question Answering task reveal that the current version could be more suitable for real-world diagnostic applications and is characterized by unreliable and subpar accuracy in responding to diagnostic medical queries. GPT-4V consistently advises users to seek direct consultation with medical experts in cases of ambiguity, underscoring the importance of expert medical guidance and adopting a cautious approach to medical analysis.
The study needs to conduct a comprehensive examination of GPT-4V’s limitations within the medical Visual Question Answering task. It does mention specific challenges, such as GPT-4V’s difficulty in interpreting size relationships and contextual contours within CT images. GPT-4V tends to overemphasize image markings and may need help differentiating between queries solely based on these markings. The current study needs to explicitly address limitations related to handling complex medical inquiries or providing exhaustive answers.
In conclusion, the GPT-4V language model is unreliable or accurate enough for medical diagnostics. Its limitations highlight the need for collaboration with medical experts to ensure precise and nuanced results. Seeking expert advice and consulting with medical professionals is essential for achieving clear and comprehensive answers. GPT-4V consistently emphasizes the significance of expert guidance, particularly in cases of uncertainty.
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Sana Hassan, a consulting intern at Marktechpost and dual-degree student at IIT Madras, is passionate about applying technology and AI to address real-world challenges. With a keen interest in solving practical problems, he brings a fresh perspective to the intersection of AI and real-life solutions.