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  • Promising Future of Novel Beta-Lactam Antibiotics Against Bacterial Re

    Promising Future of Novel Beta-Lactam Antibiotics Against Bacterial Re

    Introduction

    Antibiotic resistance is a growing global health concern, largely driven by the overuse, misuse, and frequent prescription of antibiotics—particularly beta-lactam agents.1–4 Beta-lactam antibiotics are characterised by the…

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  • Your Samsung phone can now detect nudity in incoming videos: Here’s how 
(HT Tech)

    Your Samsung phone can now detect nudity in incoming videos: Here’s how (HT Tech)

    Published on: Oct 09, 2025 11:35 am IST

    Samsung users may now receive warnings before opening videos with nudity in Messages, as Google expands its safety features to cover more explicit content.

    Receiving unexpected explicit…

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  • Decarbonising heavy-duty road transport: State of the enabling conditions – ACEA – European Automobile Manufacturers' Association

    1. Decarbonising heavy-duty road transport: State of the enabling conditions  ACEA – European Automobile Manufacturers’ Association
    2. The EU will need up to 5,300 public megawatt chargers for electric trucks by 2030, new ICCT study shows  International Council on Clean Transportation
    3. ACEA urges urgent review of EU truck CO₂ targets  Commercial Motor
    4. Europe will lose out to China in e-trucks without EU action, warns industry  Financial Times
    5. Logistics Giants, Transport Companies, & Power Sector Call on President von der Leyen to Set Zero Emission Targets for Clean Deliveries  CleanTechnica

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  • Details matter – how loan pricing affects monetary policy transmission in the euro area

    Details matter – how loan pricing affects monetary policy transmission in the euro area

    by Kārlis Vilerts, Sofia Anyfantaki, Konstantīns Beņkovskis, Sebastian Bredl, Massimo Giovannini, Florian Matthias Horky, Vanessa Kunzmann, Tibor Lalinsky, Athanasios Lampousis, Elizaveta Lukmanova, Filippos Petroulakis and Klāvs Zutis[1]

    Merely classifying loans as fixed-rate or floating-rate[2] fails to fully capture their distinct sensitivity to changes in ECB policy rates. We analysed the maturity of the relevant risk-free rates used to price new loans to see if it affected their short-term interest rate sensitivity – which it did. In countries where new loans were priced using shorter-term risk-free rates, interest rates increased more sharply during the ECB’s monetary tightening, regardless of the loan’s own maturity. This effect was not purely mechanical. Banks partly offset this rise by lowering the premia they charged. By looking beyond headline classifications, we gain a more nuanced understanding of how variations in lending practices drive cross-country differences in monetary policy pass-through.

    Beyond fixed and floating

    Although the euro area has a single currency and a common monetary policy, lending practices differ between euro area countries in several ways that shape the pass-through of monetary policy. In Vilerts et al. (2025), we study a less explored difference: the maturity of the relevant overnight interest rate swap (OIS) at the time of issuance of new loans. We use data from AnaCredit, a comprehensive euro area-wide loan-level database, covering about seven million new loans issued by banks to non-financial corporations (NFCs) in 2022-23.[3] This timeframe encompasses the series of post-pandemic rate hikes.

    Our preliminary analysis reveals that structural factors, such as loan type, firm size or loan maturity, explain only a small portion of the lending rate differences across euro area countries. This suggests that other loan characteristics may play a more significant role.[4] In our study, we break the interest rate on individual loans down into a “relevant risk-free rate” and a “premium” – the residual compensating banks for risk. The relevant risk-free rate is that of the OIS. For fixed-rate loans the maturity of the relevant OIS is that equal to the maturity of the loan, while for floating-rate loans it is the maturity corresponding to the loan’s reference rate at origination.[5] For example, the relevant risk-free rate for a five-year fixed-rate loan is the five-year OIS rate on the issuance date. In contrast, for a five-year floating-rate loan benchmarked against a three-month EURIBOR and adjusted every three months, the relevant risk-free rate would be the three-month OIS rate. The premium is then calculated as the difference between the lending rate and the relevant risk-free rate.

    We find striking cross-country variation (Chart 1) in the maturity of the relevant risk-free rates: in countries such as Latvia and Ireland maturities are very short – around six months on average. Meanwhile in other countries, such as the Netherlands, Malta and France, they often exceed five years on average.

    Chart 1

    Cross-country heterogeneity in the maturity of the relevant risk-free rate

    (years)

    Source: Vilerts et al. (2025).

    Note: The figure shows the weighted average maturity of the relevant risk-free rate for the newly issued loans of NFCs in euro area countries, 2022-23.

    Loan characteristics key for pass-through

    These structural differences mean that monetary policy transmits with varying strength and speed across the euro area, depending on which segment of the risk-free yield curve dominates local lending. Two key questions emerge. First, to what extent can the cross-country variation in the rise of average interest rates on new loans between early 2022 and late 2023 be explained by differences in the evolution of the risk-free rates used to price NFC loans? And, second, how does the maturity of the relevant risk-free rate affect the pass-through of monetary policy rate changes to interest rates on new loans?

    “Before and after” analysis of lending rates

    To address the first question, we employ a time-difference approach to analysing changes in interest rate levels. In particular, we compare interest rates – as well as adjustments in the relevant risk-free rates and shifts in the premium – on loans issued in two periods bracketing the 2022-23 tightening cycle.[6] They are the first quarter of 2022, before the first hike in July 2022, and the fourth quarter of 2023, after the final hike in September 2023. We find that most of the rise in interest rates on new loans during the post-pandemic tightening was driven by increases in the relevant risk-free rate (Chart 2).

    Chart 2

    “Before and after” analysis of lending rates

    (conditional change between the first quarter of 2022 and the last quarter of 2023, percentage points)

    Source: Vilerts et al. (2025).

    Notes: The figure shows conditional changes in lending rates (from the first quarter of 2022 to the fourth quarter of 2023) with 95% confidence bands, breaking them down into the contributions from relevant risk-free rates and the premium.

    Three key observations emerge from the analysis. First, the pass-through of changes in the relevant risk-free rates to changes in lending rates exhibits notable cross-country variation. Some 11 countries experienced an increase in relevant risk-free rates exceeding 4 percentage points, with Latvia and Estonia experiencing the highest increases at 4.37-4.41 percentage points. In contrast, the Netherlands and Malta saw risk-free rates rise by only 2.85 percentage points. Second, the distinction between fixed and floating-rate loans does not always provide a clear explanation for the observed patterns. For the relevant risk-free rates the change was particularly pronounced in countries like Latvia and Ireland, where floating-rate loans with short fixation periods are more prevalent. Similarly, a strong contribution of relevant risk-free rates was observed in Italy, despite its higher reliance on fixed-rate loans which tend to have shorter maturities. Third, a large increase in the relevant risk-free rates does not necessarily result in the largest increase in lending rates. In several countries, the rise in relevant risk-free rates was offset by a decline in the premium, which moderated the overall increase in lending rates.

    Pass-through of monetary policy rates to lending rates

    We then turn our attention to loans issued near ECB Governing Council meetings and use a stacked time-difference regression (following Bredl, 2024)[7] instead of a simple before-and-after comparison. Specifically, we examine how the pass-through of monetary policy rate changes varies across loans priced off different maturities of relevant risk-free rates, now using the full set of actual changes in the policy rate, instrumented by high-frequency surprises (Altavilla et al. 2019). As shown in Chart 3, the pass-through from monetary policy rates to lending rates strengthens as the maturity of the relevant risk-free rates shortens.

    However, applying this approach to the components of interest rates shows that this mechanical pass-through is not the only factor at play, as we see adjustments in premia smoothing differences in pass-through across loan categories. We find that premia increased less for loans linked to shorter maturity risk-free rates, which partially offsets the differences in the aggregate pass-through to lending rates.

    Chart 3

    Stronger pass-through at shorter maturities

    Source: Vilerts et al. (2025).

    Notes: The figure shows the effect of a 1 percentage point increase in the deposit facility rate on lending rates for loans issued within the 6 weeks before or the 7-12 weeks after an ECB Governing Council meeting relative to loans for which the relevant risk-free rates have maturities over five years.

    There are several possible explanations for this pattern. On the lender side, repricing of loans can at times outpace the pass-through to funding costs, improving net interest income and creating scope to lower premia on new loans – especially for those priced off short-term reference rates. On the borrower side, tighter policy can alter the composition of lending and firms may substitute borrowing across maturities and rate types. Overall, the evidence points to systematic smoothing effects: premia adjustments dampen differences in loan rate changes. This suggests that the variation reflects pricing within the bank rather than shifts in the banks doing the lending.

    Loan pricing design matters for monetary policy

    Our results point to several important implications for monetary policy. First, loan pricing design matters for monetary policy transmission. Markets where lending is tied to shorter maturities exhibit stronger and faster transmission. Second, loan premia also adjust independently of exogenous factors. When short-term rates move sharply, banks reprice loan premia over the relevant risk-free rate in ways that smooth differences across loans priced off different maturities. Recognising this interaction helps explain cross-country differences during tightening episodes and anticipate how the composition and pricing of new credit respond to policy.

    References

    Altavilla, C., Brugnolini, L., Gürkaynak, R.S., Motto, R. and Ragusa, G. (2019), “Measuring euro area monetary policy”, Journal of Monetary Economics, Vol. 108, Issue C, pp. 162-179.

    Bredl, S. (2024), Regional loan market structure, bank lending rates and monetary transmission.

    Vilerts, K., Anyfantaki, S., Beņkovskis, K., Bredl, S., Giovannini, M., Horky, F.M., Kunzmann, V., Lalinsky, T., Lampousis, A., Lukmanova, E., Petroulakis, F. and Zutis, K. (2025), “Details Matter: Loan Pricing and Transmission of Monetary Policy in the Euro Area”, Working Papers, No 3078, ECB.

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  • ‘Netflix’ giraffe Bashu put down after suffering kidney failure

    ‘Netflix’ giraffe Bashu put down after suffering kidney failure

    Whipsnade Zoo The head of a giraffe, with a large blue sky behind it. The giraffe is brown and cream in colour. Whipsnade Zoo

    Bashu the giraffe had been at Whipsnade Zoo, Bedfordshire, since 2014

    A beloved and “iconic” giraffe that appeared in a Netflix drama has been put down after it suffered kidney failure.

    Whipsnade Zoo, in Bedfordshire, said Bashu, 13,…

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  • Getac launches S510AD rugged AI laptop for demanding field work

    Getac launches S510AD rugged AI laptop for demanding field work

    Getac has introduced the S510AD laptop, a rugged device designed with AMD Ryzen AI processing technology, aimed at professionals needing advanced edge-AI performance in challenging field and industrial conditions.

    Meeting Copilot+ PC…

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  • Severe Corneal Pannus as a Rare Ocular Complication of Anti-TNF-α The

    Severe Corneal Pannus as a Rare Ocular Complication of Anti-TNF-α The

    Introduction

    Tumor necrosis factor-α inhibitors (anti-TNF-α) have revolutionized the management of various autoimmune diseases, such as rheumatoid arthritis and inflammatory bowel disease. TNF-α is a key cytokine in inflammatory pathways,…

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  • John Lennon’s banjo goes on show on what would have been his 85th

    John Lennon’s banjo goes on show on what would have been his 85th

    A banjo played by John Lennon is being unveiled alongside a mosaic featuring nearly 1,300 images of The Beatles star to mark what would have been his 85th birthday.

    Fans are expected from around the world for the celebrations at Strawberry Field…

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  • Clinical value of APRI and FIB-4 on bleeding risk and 30-day prognosis

    Clinical value of APRI and FIB-4 on bleeding risk and 30-day prognosis

    Introduction

    Liver cirrhosis represents a progressive, systemic disorder arising from chronic liver injury, marked by diffuse hepatic fibrosis, pseudolobule formation, and aberrant vascular proliferation.1 Approximately 85% of individuals with…

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