Coronavirus and Gordon Life Science Institute

Abstract

The impacts of coronavirus to our planet are unprecedented; i.e., they are going to eliminate the entire mankind. Driven by such horrible situation, some philosophical viewpoints have naturally happened. Whether the “World End” must come? If yes, when? During this waiting period, the best way to do science is via the Internet Institute, such as “Gordon Life Science Institute”, and the results thus achieved will be most rewarding.

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Chou, K.C. (2020) Coronavirus and Gordon Life Science Institute. Natural Science, 12, 429-440. doi: 10.4236/ns.2020.127035.

1. INTRODUCTION

As of June-30-2020, more than 200 countries on our planet have been attacked by the coronavirus disease 2019 (COVID-19): for USA alone with reported 2,682,424 cases of which 128,824 resulted in deaths; for United Kingdom with 312,654 cases and 43,730 deaths.

2. FACTS AND DISCUSSIONS

The damage power of COVID-19 is overwhelmingly stronger than “atomic bombs” (2nd World War, 1945) or any kind of terrorists (“911”, 2001). The death number has also far exceeded the death number reported for any war of USA history. Accordingly, such unprecedented power must come from the “Creator” rather than from being created human beings.

Coronavirus disease 2019 (COVID-19) is an infectious disease caused by severe acute respiratory syndrome, which was first identified in December 2019 in Wuhan, Hubei, China. After April 2020 and causing about 4,000 deaths, although no remarkable infectious cases reported in Wuhan. Unfortunately, the 2nd-round coronavirus diseases have started landing on Beijing during May 2020. This kind of first from “Eastern countries” to Western Countries” and then as a feedback from the West to the East, very much like playing “ping-pong” or “Tennis” ball. Here, the ball is none but the “Coronavirus”.

Facing such environments, all the scientists working in a sharing laboratory of the Universities or most conversional Institutes must or being forced to wear masks except those working in the “Internet Institute” such as the “Gordon Life Scient Institute” [1 , 2]. And the results thus obtained will be most awarding as elaborated in [3]. As concurred by a series of interesting publications, particularly for the idea of “Pseudo Amino Acid Composition” [4-99], and “5-Steps Rule” [100-140].

3. CONCLUSIONS

For the planet where we are staying, after several rounds of the killings as described in the Section 2, its “End” will be expedited exponentially with time. Before its “End”, it will be most awarding to do science with the “Internet Institutes”.

Conflicts of Interest

The authors declare no conflicts of interest.

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