Daniel Truhn Profile
Daniel Truhn

@DanielTruhn

Followers
223
Following
201
Media
6
Statuses
57

Professor of Medicine, Radiologist, AI Researcher

University Hospital Aachen
Joined April 2019
Don't wanna be here? Send us removal request.
@Radiology_AI
Radiology: Artificial Intelligence
3 months
#RadioRAG introduces real-time data retrieval to support the accuracy & factuality of LLMs in radiologic diagnosis https://t.co/9o8PLjuwNY @starasteh @DanielTruhn @laim_uka #LLM #LLMs #NLP
0
6
7
@Radiology_AI
Radiology: Artificial Intelligence
4 months
RadioRAG retrieves context-specific information from #Radiopaedia in real-time https://t.co/9o8PLjuwNY @starasteh @DanielTruhn @laim_uka #LLMs #radiology #AI
0
10
14
@Radiology_AI
Radiology: Artificial Intelligence
4 months
#LLMs using radiology retrieval-augmented generation (RadioRAG) showed variable performance in answering case-based radiology questions https://t.co/9o8PLjuwNY @starasteh @DanielTruhn @laim_uka #Radiopaedia #radiology #AI
1
4
14
@Dykex6
Dyke Ferber
5 months
Very happy to share our recent article in Nature Cancer on AI Agents for Decision Making in Cancer :) @jnkath
@NaturePortfolio
Nature Portfolio
5 months
A paper in @NatureCancer presents an autonomous artificial intelligence agent system for deployment of specialized medical oncology computational tools. The AI agent reached correct clinical conclusions in 91% of cases. https://t.co/Rt8YaZRjcF
0
8
18
@ElinardouHelena
Helena Linardou
6 months
Exciting start to the #AIFOROncology Congress in Milan! First session delivered insightful lectures on data-driven models and federated learning – paving the way for innovative oncology solutions! Stay tuned for a great 2-day experience. #OncologyAI #DigitalHealth
0
1
5
@peterhan91
Tianyu Han
1 year
🚨 New Paper Alert! 🚨 We've discovered a major vulnerability in medical large language models (LLMs): they're highly susceptible to targeted misinformation attacks. This could have serious implications for healthcare AI! @DanielTruhn @jnkath Full paper:
Tweet card summary image
nature.com
npj Digital Medicine - Medical large language models are susceptible to targeted misinformation attacks
2
4
11
@jnkath
Jakob Nikolas Kather
1 year
Today, we hosted the first conference on LLMs in medicine at @katherlab / @tudresden_de, chaired by @IsabellaWies 🤩 We are not just riding the hype train🚆 - we are working hard to provide scientific & clinical evidence for benefits and limitations of LLMs in healthcare
3
10
66
@radiology_rsna
Radiology
1 year
This review explores the transition of deep learning in radiology from laborious fully supervised methods to more scalable weakly supervised methods. @laim_uka @ekfzdigital @jnkath @katherlab @danieltruhn @LeoMisera @FranzesGustav https://t.co/MuCmWg0D1d
0
10
24
@starasteh
Soroosh Tayebi Arasteh
1 year
Happy to share our new preprint: "RadioRAG" LLMs 📚 + online RAG (=real-time data🌐) = 📈diagnostic accuracy in radiology questions • Accuracy boosts of 2%-54% • Smaller models performing close to bigger models such as #GPT4 📖: https://t.co/cOum2RhNt4 @laim_uka @DanielTruhn
1
4
8
@DanielTruhn
Daniel Truhn
1 year
Resources to start: I recommend starting with https://t.co/EEF7BZgOMW and playing around with the git repository #RadAIChat
0
0
6
@DanielTruhn
Daniel Truhn
1 year
Challenges with BERT: Setting up a BERT LLM usually requires technical expertise. Many GPT models (e.g., ChatGPT) are accessible via a browser-based user-interface – less so for BERT models. #RadAIChat
0
2
8
@DanielTruhn
Daniel Truhn
1 year
Challenges with BERT: As with any LLM: regulatory approval is a problem. Without it, you expose yourself to legal risks when using LLMs in actual clinical practice. #RadAIchat
0
1
8
@DanielTruhn
Daniel Truhn
1 year
Challenges with BERT: It might be necessary to fine-tune the model to the medical domain, see the excellent work by my colleague @K_Bressem: https://t.co/EEF7BZgOMW #RadAIchat
0
2
8
@DanielTruhn
Daniel Truhn
1 year
Applications of BERT for Radiology: Protocol assignment, prioritization, and many more… https://t.co/6czS3CSKQg #RadAIchat
0
1
4
@DanielTruhn
Daniel Truhn
1 year
Applications of BERT for Radiology: extracting key findings from radiological reports. #RadAIchat
0
1
4
@DanielTruhn
Daniel Truhn
1 year
If you want to generate human-like text – use GPT. If you want to extract information from an existing text – try BERT. #RadAIchat
0
1
5
@DanielTruhn
Daniel Truhn
1 year
BERT is good at classification of text, GPT is good at generating new text. #RadAIchat
0
1
4