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Systemic Anticancer Therapy Timelines Extraction From Electronic Medical Records Text: Algorithm Development and Validation Background: The systemic treatment of cancer typically requires the use of multiple anticancer agents in combination and/or sequentially. Clinical narrative texts often contain extensive descriptions of the temporal sequencing of systemic anticancer therapy (SACT), setting up an important task that may be amenable to automated extraction of SACT timelines. Objective: We aimed to explore automatic methods for extracting patient-level SACT timelines from clinical narratives in the electronic medical records (EMRs). Methods: We used two datasets from two institutions: (1) Colorectal Cancer (CRC) dataset including the entire EMR of the 199 patients in the THYME dataset, and (2) 2024 ChemoTimelines shared task dataset including 149 patients with ovarian cancer, breast cancer and melanoma. We explored finetuning smaller language models trained to attend to events and time expressions, and few-shot prompting of Large Language Models (LLMs). Evaluation used the 2024 ChemoTimelines shared task configuration – Subtask1 involving the construction of SACT timelines from manually annotated SACT event and time expression mentions provided as input in addition to the patient’s notes, and Subtask2 requiring extraction of SACT timelines directly from the patient’s notes. Results: Our task-specific finetuned EntityBERT model achieved 93% F1 score, outperforming the best results in Subtask1 of the 2024 ChemoTimelines shared task (90%). It ranked second in Subtask2. LLM (LLaMA2, LLaMA3.1, Mixtral) performance lagged the task-specific finetuned model performance for both the THYME and shared task datasets. On the shared task datasets, the best LLM performance was 77% macro F1, 16 percentage points lower than the task-specific finetuned system (Subtask1). Conclusions: In this paper, we explored approaches for patient-level timeline extraction through the SACT timeline extraction task. Our results and analysis add to the knowledge of extracting treatment timelines from EMR clinical narratives using language modeling methods.

Systemic Anticancer Therapy Timelines Extraction From Electronic Medical Records Text: Algorithm Development and Validation #CancerResearch #MedicalRecords #AnticancerTherapy #MachineLearning #HealthcareInnovation

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Thank you to Dr. Beth Weaver, University of #Wisconsin School of Medicine, for presenting our #DistinguishedLecture on the urgent need to optimize the efficacy of #paclitaxel, an #anticancertherapy that has been used to treat a variety of #cancer for decades.
@yaleschoolofmed.bsky.social

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What is chemotherapy?

Chemotherapy is a form of cancer treatment based on the administration of anti-cancer drugs, the purpose of which is to destroy cancer cells or prevent them from multiplying.

#chemotherapy #cancertreatment #Anticancertherapy #Chemotherapycancertreatment

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Enhanced Antitumor Efficacy and Reduced Toxicity in Colorectal Cancer Using a Novel Multifunctional Rg3- Targeting Nanosystem Encapsulated with Oxaliplatin and Calcium Peroxide ➡️ www.dovepress.com/enhanced-ant...

#InternationalJournalofNanomedicine #TumorMicroenvironment #AnticancerTherapy

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a man is sitting on a couch reading a book with a sticker that says ' a ' on it ALT: a man is sitting on a couch reading a book with a sticker that says ' a ' on it

Another weekly selection of #cancermetabolism and #anticancertherapy. Thanks to @biomednews.bsky.social for the assistance! Enjoy! biomed.news/bims-meract/...

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a cat is sitting on a table reading a book titled the art of military strategy . ALT: a cat is sitting on a table reading a book titled the art of military strategy .

Good Sunday everybody! This weekly summary of papers (thanks to @biomednews.bsky.social) in #metabolism and #anticancertherapy has some very cool papers in. Enjoy the #reading biomed.news/bims-meract/...

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