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Related Concept Videos

Transformers01:26

Transformers

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A device that transforms voltages from one value to another using induction is called a transformer. A transformer consists of two separate coils, or windings, wrapped around the same soft iron core. However, they are electrically insulated from each other.
The iron core has a substantial relative permeability. Therefore, the magnetic field lines generated due to the current in one winding are almost entirely confined within the core, such that the same magnetic flux permeates each turn of both...
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Transformers with Off-Nominal Turns Ratios01:25

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In scenarios involving parallel transformers with disparate ratings, developing per-unit models requires accommodating off-nominal turns ratios. This situation arises when the selected base voltages are not proportional to the transformer’s voltage ratings. Consider a transformer where the rated voltages are related by the term a. If the chosen voltage bases satisfy a relationship involving term b, term c is defined as the ratio of these bases. This ratio is then substituted into the...
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Types Of Transformers01:16

Types Of Transformers

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Transformers can provide desired voltages to a circuit by modifying the number of turns in the secondary windings.
If the ratio of the number of turns in the secondary winding to that of the primary winding is greater than one, then the transformer is said to be a step-up transformer. In a step-up transformer, the voltage at the secondary winding is greater than the voltage applied at the primary winding.
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Improving Translational Accuracy02:07

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Base complementarity between the three base pairs of mRNA codon and the tRNA anticodon is not a failsafe mechanism. Inaccuracies can range from a single mismatch to no correct base pairing at all. The free energy difference between the correct and nearly correct base pairs can be as small as 3 kcal/ mol. With complementarity being the only proofreading step, the estimated error frequency would be one wrong amino acid in every 100 amino acids incorporated. However, error frequencies observed in...
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Energy Losses in Transformers01:21

Energy Losses in Transformers

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In an ideal transformer, it is assumed that there are no energy losses, and, hence, all the power at the primary winding is transferred to the secondary winding. However, in reality,  the transformers always have some energy losses, and, hence, the output power obtained at the secondary winding is less than the input power at the primary winding due to energy losses.
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The first cause can be  the high resistance of the...
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Updated: Sep 19, 2025

A Swin Transformer-Based Model for Thyroid Nodule Detection in Ultrasound Images
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Trajectory-Ordered Objectives for Self-Supervised Representation Learning of Temporal Healthcare Data Using

Ali Amirahmadi1, Farzaneh Etminani2,3, Jonas Björk4

  • 1Center for Applied Intelligent Systems Research in Health, Halmstad University, Halmstad, Sweden.

JMIR Medical Informatics
|June 4, 2025
PubMed
Summary
This summary is machine-generated.

TOO-BERT, a novel deep learning model, enhances electronic health record (EHR) analysis by better capturing temporal patient data. This approach improves predictions for conditions like heart failure and Alzheimer's disease.

Keywords:
BERTalzheimer diseasedeep learningdisease predictioneffectivenesselectronic health recordheart failurelanguage modemasked language modepatient trajectoriesprolonged health of stayrepresentation learningtemporaltransformer

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Area of Science:

  • Artificial Intelligence
  • Biomedical Informatics
  • Machine Learning

Background:

  • Electronic health records (EHRs) offer vast potential for improving patient care through deep learning.
  • Modeling sequential EHR data is challenging due to complex temporal relationships in patient trajectories.
  • Existing transformer models with masked language modeling (MLM) capture context but struggle with temporal dynamics.

Purpose of the Study:

  • To enhance EHR sequence modeling by addressing limitations in capturing temporal dependencies.
  • To introduce a novel transformer-based model, TOO-BERT, for improved understanding of patient trajectories.

Main Methods:

  • Developed Trajectory Order Objective BERT (TOO-BERT), a transformer model integrating a novel Trajectory Order Objective (TOO) with MLM pretraining.
  • TOO-BERT pretrains by distinguishing ordered from permuted medical event sequences, focusing on frequently co-occurring codes/visits.
  • Evaluated TOO-BERT on MIMIC-IV and Malmo Diet and Cancer Cohort (MDC) datasets, comparing against conventional methods and MLM-pretrained transformers.

Main Results:

  • TOO-BERT significantly outperformed existing methods in predicting heart failure (HF), Alzheimer's disease (AD), and prolonged length of stay (PLS) on both datasets.
  • Achieved improved AUC scores for HF and AD prediction on the MDC dataset (e.g., HF from 67.7% to 73.9%).
  • Demonstrated robust performance in HF prediction even with limited fine-tuning data on the MIMIC-IV dataset.

Conclusions:

  • Integrating temporal ordering objectives into MLM-pretrained models effectively captures complex temporal relationships in EHR data.
  • TOO-BERT provides deeper insights into disease progression by representing sophisticated structural patterns in patient trajectories.
  • The model offers a more nuanced understanding of patient health journeys and disease development.