シャドーイング練習: SOFI: Sequence-based, cross-sectoral, One-health surveillance of food-borne infections | IMMEM XIV - YouTubeで英語スピーキングを学ぶ

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Hello, my name is Kaspar Rømer-Willemsen and I'm with the SSI in Copenhagen, Denmark.
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Hello, my name is Kaspar Rømer-Willemsen and I'm with the SSI in Copenhagen, Denmark.
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I'm here to tell you about the SOFI,
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a platform for sequence-based cross-sectoral,
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one-health-based surveillance of foodborne infections in Denmark.
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But before I get started,
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I just want to thank the organizers of the MM conference
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for organizing a fantastic conference in an absolutely amazing location in Porto.
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Thank you so much.
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I also want to thank all the co-authors that are on this poster
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because essentially they were the ones involved in the design and the implementation of the SOFI platform.
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They're the ones that did the bulk of the work.
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I'm just basically allowed to come here and talk about it.
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So I'm very, very grateful.
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Thank you.
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So if we look at how surveillance
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or at least how investigation of outbreaks work in the Danish system in terms of foodborne bacterial infections,
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if we look at how that works before the implementation of SOFI,
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well, basically you have two different sectors.
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So we have three different actors here.
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We have the National Food Institute at DTU.
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There's the Danish Veterinary and Food Administration.
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And then there's us at the SSI.
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So constituting basically the public health side.
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And then there's also a food and veterinary side.
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So the way things would work before the implementation of SOFI was that you would have these two different silos.
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So there would be strong collaborations across.
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We have a central outbreak management group.
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They meet every week, basically just coordinating whatever comes in.
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Are there any signals?
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Are there any ongoing outbreaks? do we need to coordinate any efforts?
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But essentially the way that everything was analyzed was kind of siloed
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so that you would have these two sectoral silos where you would have samples coming in,
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DNA extracted, sequencing done, all the different analysis would then be run within each silo.
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If there's any suspicion of anything that might go across these two silos,
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then you would have ad hoc preparations for sharing of sequences
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so that you can do comparisons in a collaborative manner across from that.
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So what has actually changed now is that now we have this the SOFI platform.
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So certain things are the same
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so basically samples are still coming in to the respective institution
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public health side everything in terms of samples derived from patients come to us at SSI.
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We run the samples we do the sequencing
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but once the sequencing is instead of running everything in a
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continued siloed approach now everything is coming into this sophie platform
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so what is sophie
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so basically sophie is um at one on the one hand it's a data sharing platform
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so that basically means
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that prior to everything um you know everything had to be
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sorted out in terms of all the different legal aspects we're
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mixing like personal sensitive information sensitive information about food producers and stuff like that.
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So everything has to be completely sealed down in a legal manner,
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but also having to make sure that once we enter into this SOFI data sharing aspect,
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we need to make sure that it's very,
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very clear who has access to what,
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what is shared, what is common,
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what is open to common analysis,
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and what is absolutely not shared,
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what has to be completely cordoned off to each of the respective partner institutions.
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So, but from surveillance, or outbreak investigation standpoint,
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things are now coming into the same pipeline instead of having this siloed approach,
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it's the same pipeline.
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So now everything is being analyzed according to different analysis modules.
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So, and that ranges from initial quantity control,
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but also to all sorts of species specific modules.
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So like species specific toxin detection,
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virulence factors, stuff like that.
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But most importantly for this,
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actually also there's a CGMLST component.
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So once all this is done,
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now we end up with everything ending up in the same user interface down here.
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So what that means is that instead of having a siloed approach where ad hoc,
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we would have to make sure that we share relevant data
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and we like someone had to have the suspicion that there might be something going on,
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everything is now available in the same interface So that if I'm doing this like just routine surveillance,
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I actually have the access not only to every data point from the public health side,
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but also from the food and veterinary side.
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That means that we now have an even closer collaboration than we did before.
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And it also means that we have the possibility to be much quicker about cluster detection,
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outbreak investigation, and consequently quicker to implement any countermeasures.
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So all in all, a win-win-win situation.
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That was a very, very quick flydown.
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Check out the poster in the online collection from the conference.
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If there's any questions, absolutely feel free to contact us.
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Thank you for your attention.

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文脈と背景

こんにちは、私の名前はカスパー・ローマー・ウィレムセンで、デンマーク・コペンハーゲンのSSIに所属しています。このビデオでは、デンマークにおける食品由来感染症のためのシーケンスベースのワンヘルス監視プラットフォーム「SOFI」についてお話しします。SOFIは、異なるセクター間でのデータ共有を促進し、食品由来感染の監視を向上させることを目的としています。このトピックは、特に公共の健康を守るための試みとして重要です。

日常コミュニケーションのためのトップ5フレーズ

  • 「サンキュー」 - 例えば、「この素晴らしいカンファレンスを開催してくれたことに感謝します。」
  • 「データ共有プラットフォーム」 - 「SOFIはデータ共有プラットフォームです。」
  • 「監視を向上させる」 - 「私たちの目標は、食品由来感染症の監視を向上させることです。」
  • 「強いコラボレーション」 - 「セクター間で強いコラボレーションがあります。」
  • 「サンプルが入ってくる」 - 「私たちのところにサンプルが入ってきます。」

ステップバイステップシャドーイングガイド

このビデオの内容をシャドーイングすることで、より流暢に英語を話せるようになります。以下の手順を参考にしてください。

  1. 集中して聞く: 初めてビデオを視聴する際は、内容を理解することに集中しましょう。特に、登場人物の発音やイントネーションに注意を払います。
  2. トランスクリプトを参照: 提供されたトランスクリプトを読みながらビデオを再生し、話されているフレーズを確認します。これが英語シャドーイングの基礎となります。
  3. シャドーイングを始める: スピーカーの発音の後に続いて、できるだけ正確に模倣します。「shadowspeak」技術を用いて、自分の発音やリズムを確認しながら練習することが重要です。
  4. 繰り返し練習: 難しい部分があれば、何度も繰り返して練習します。これにより、自信を持って発音できるようになるでしょう。
  5. 録音と振り返り: 自分の声を録音して、スピーカーの発音との違いを確認します。このフィードバックは非常に有益です。

このプロセスを通じて、日常会話で使えるフレーズをしっかりと習得できます。「YouTubeで英語学習」を効果的に行うことで、英語のスキルを磨いていくことができます。積極的に「英語シャドーイング」を取り入れて、リスニングやスピーキング能力を向上させましょう。

シャドーイングとは?英語上達に効果的な理由

シャドーイング(Shadowing)は、もともとプロの通訳者養成プログラムで開発された言語学習法で、多言語習得者として知られるDr. Alexander Arguelles によって広く普及されました。方法はシンプルですが非常に効果的:ネイティブスピーカーの英語を聞きながら、1〜2秒の遅延で声に出してすぐに繰り返す——まるで「影(shadow)」のように話者を追いかけます。文法ドリルや受動的なリスニングと異なり、シャドーイングは脳と口の筋肉が同時にリアルタイムで英語を処理・再現することを強制します。研究により、発音精度、抑揚、リズム、連音、リスニング力、そして会話の流暢さが大幅に向上することが確認されています。IELTSスピーキング対策や自然な英語コミュニケーションを目指す方に特におすすめです。

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