Mihir arora biography template
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Published in sista edited form as: Cancer Discov. 2022 Jun 2;12(6):1462–1481. doi: 10.1158/2159-8290.CD-21-1117
Mihir Rajurkar
1Mass General Cancer Center, Harvard Medical School; Charlestown, MA, USA.
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Aparna R Parikh
1Mass General Cancer Center, Harvard Medical School; Charlestown, MA, USA.
2Department of Medicine, Massachusetts General Hospital, Harvard Medical School; Boston, MA, USA.
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Alexander Solovyov
3Computational Oncology, Department of Epidemiology and Biostatistics; Memorial Sloan Kettering Cancer Center, New York, NY, USA.
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Eunae You
1Mass General Cancer Center, Harvard Medical School; Charlestown, MA, USA.
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Anupriya S Kulkarni
1Mass General Cancer
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\our: An IE Free Rider Hatched by Massive Nutrition in LLM’s Nest
Letian Peng, Zilong Wang, Feng Yao, Jingbo Shang
University of California, San Diego
{lepeng, ziw049, fengyao, jshang}@ucsd.edu
Abstract
Massive high-quality data, both pre-training raw texts and post-training annotations, have been carefully prepared to incubate advanced large language models (LLMs). In contrast, for information extraction (IE), pre-training information, such as BIO-tagged sequences, are hard to scale up. We show that IE models can act as free riders on LLM resources by reframing next-token prediction into extraction for tokens already present in the context. Specifically, our proposed next tokens extraction (NTE) paradigm learns a versatile IE model, \our, with M extractive data converted from LLM’s pre-training and post-training information. Under the few-shot setting, \ouradapts effectively to traditional and complex instruction-following IE with better performance than existing pre-trained IE model
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Reference ranges for cardiac structure and function using cardiovascular magnetic resonance (CMR) in Caucasians from the UK Biobank population cohort
- Research
- Open access
- Published:
- Steffen E. Petersen1,
- Nay Aung1,
- Mihir M. Sanghvi1,
- Filip Zemrak1,
- Kenneth Fung1,
- Jose Miguel Paiva1,
- Jane M. Francis2,
- Mohammed Y. Khanji1,
- Elena Lukaschuk2,
- Aaron M. Lee1,
- Valentina Carapella2,
- Young Jin Kim2,3,
- Paul Leeson2,
- Stefan K. Piechnik2 &
- …
- Stefan Neubauer2
Journal of Cardiovascular Magnetic Resonancevolume 19, Article number: 18 (2017) Cite this article
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Abstract
Background
Cardiovascular magnetic resonance (CMR) is the gold standard method for the assessment of cardiac structure and function. Reference ranges permit differentiation between normal and pathological states. To date, this study is the largest to provide CMR specific reference ranges for left v