1.Enhancing fucoxanthin production in Phaeodactylum tricornutum by photo-fermentation.
Defei ZHU ; Runqing YANG ; Dong WEI
Chinese Journal of Biotechnology 2023;39(3):1070-1082
The aim of this study was to develop a technical system for high-efficient production of fucoxanthin by photo-fermentation of Phaeodactylum tricornutum. In a 5 L photo-fermentation tank, the effects of initial light intensity, nitrogen source and concentration as well as light quality on biomass concentration and fucoxanthin accumulation in P. tricornutum were investigated systematically under mixotrophic condition. The results showed that the biomass concentration, fucoxanthin content and productivity reached the highest level of 3.80 g/L, 13.44 mg/g and 4.70 mg/(L·d) under the optimal conditions of initial light intensity of 100 μmol/(m2·s), 0.02 mol TN/L of tryptone: urea (1:1, N mol/N mol) as mixed nitrogen source, and a mixed red/blue (R: B=6:1) light, 1.41, 1.33 and 2.05-fold higher than that before optimization, respectively. This study developed a key technology for enhancing the production of fucoxanthin by photo-fermentation of P. tricornutum, facilitating the development of marine natural products.
Fermentation
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Xanthophylls
;
Light
;
Diatoms
;
Nitrogen
2.Promoting fucoxanthin accumulation in Phaeodactylum tricornutum by multiple nitrogen supplementation and blue light enhancement.
Zexiong YANG ; Runqing YANG ; Defei ZHU ; Dong WEI
Chinese Journal of Biotechnology 2023;39(11):4580-4592
The aim of this study was to promote fucoxanthin accumulation in Phaeodactylum tricornutum by photo-fermentation through optimizing the mode of multiple nitrogen supplementation and blue light enhancement. The results showed that the mixed nitrogen source (tryptone: urea=1:1, N mol/N mol; total nitrogen concentration at 0.02 mol/L) added to the culture system by six times was the best mode in shake flasks. Two-phase culture with light adjustment was then carried out in 5 L photo-fermenter with an enhanced blue light (R: G: B=67.1:16.7:16.3) in the second phase, leading to improved cell density (1.12×108 cells/mL), biomass productivity (330 mg/(d·L)), fucoxanthin content (19.62 mg/g), titer (69.71 mg/L) and productivity (6.97 mg/(d·L)). Compared with one-phase culture under red/blue (R: G: B=70.9:18.3:10.9) light and six-times nitrogen supplementation, the fucoxanthin content was significantly increased by 7.68% (P < 0.05) but the productivity did not change significantly (P > 0.05). Compared with one-phase culture under red/blue (R: G: B=70.9:18.3:10.9) light and one-time nitrogen supplementation, the content and productivity of fucoxanthin were significantly increased by 45.98% and 48.30% (P < 0.05), respectively. This study developed a two-phase culture mode with multiple nitrogen supplementation and blue light enhancement, which effectively promoted the accumulation of fucoxanthin and improved the efficiency of nitrogen source utilization, thus providing a new approach for fucoxanthin accumulation in P. tricornutum by photo-fermentation.
Nitrogen
;
Light
;
Xanthophylls
;
Diatoms
;
Dietary Supplements
3.Review and Prospect of Diagnosis of Drowning Deaths in Water.
Journal of Forensic Medicine 2022;38(1):3-13
Drowning is the death caused by asphyxiation due to fluid blocking the airway. In the practice of forensic medicine, it is the key to determine whether the corpse was drowned or entered the water after death. At the same time, the drowning site inference and postmortem submersion interval (PMSI) play an important role in the investigating the identity of the deceased, narrowing the investigation scope, and solving the case. Based on diatoms testing, molecular biology, imaging and artificial intelligence and other technologies, domestic and foreign forensic scientists have done relative research in the identification of the cause of death, drowning site inference and PMSI, and achieved certain results in forensic medicine application. In order to provide a reference for future study of bodies in the water, this paper summarizes the above research contents.
Artificial Intelligence
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Diatoms
;
Drowning/diagnosis*
;
Forensic Pathology
;
Humans
;
Lung
;
Water
4.Research Progress of Automatic Diatom Test by Artificial Intelligence.
Yong-Zheng ZHU ; Ji ZHANG ; Qi CHENG ; Kai-Fei DENG ; Kai-Jun MA ; Jian-Hua ZHANG ; Jian ZHAO ; Jun-Hong SUN ; Ping HUANG ; Zhi-Qiang QIN
Journal of Forensic Medicine 2022;38(1):14-19
Diatom test is the main laboratory test method in the diagnosis of drowning in forensic medicine. It plays an important role in differentiating the antemortem drowning from the postmortem drowning and inferring drowning site. Artificial intelligence (AI) automatic diatom test is a technological innovation in forensic drowning diagnosis which is based on morphological characteristics of diatom, the application of AI algorithm to automatic identification and classification of diatom in tissues and organs. This paper discusses the morphological diatom test methods and reviews the research progress of automatic diatom recognition and classification involving AI algorithms. AI deep learning algorithm can assist diatom testing to obtain objective, accurate, and efficient qualitative and quantitative analysis results, which is expected to become a new direction of diatom testing research in the drowning of forensic medicine in the future.
Artificial Intelligence
;
Autopsy
;
Diatoms
;
Drowning/diagnosis*
;
Humans
;
Lung
5.Application Progress of High-Throughput Sequencing Technology in Forensic Diatom Detection.
Jie CAI ; Bo WANG ; Jian-Hua CHEN ; Jian-Qiang DENG
Journal of Forensic Medicine 2022;38(1):20-30
Diatom detection is an important method for identifying drowning and throwing corpses after death and inferring the drowning sites in forensic examination of corpses in water. In recent years,high-throughput sequencing technology has achieved rapid development and has been widely used in research related to diatom taxonomic investigations. This paper reviews the research status and prospects of high-throughput sequencing technology and its application in forensic diatom detection.
Cadaver
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Diatoms/genetics*
;
Drowning/diagnosis*
;
Forensic Pathology/methods*
;
High-Throughput Nucleotide Sequencing
;
Humans
;
Lung
;
Technology
6.Comparison among Four Deep Learning Image Classification Algorithms in AI-based Diatom Test.
Yong-Zheng ZHU ; Ji ZHANG ; Qi CHENG ; Hui-Xiao YU ; Kai-Fei DENG ; Jian-Hua ZHANG ; Zhi-Qiang QIN ; Jian ZHAO ; Jun-Hong SUN ; Ping HUANG
Journal of Forensic Medicine 2022;38(1):31-39
OBJECTIVES:
To select four algorithms with relatively balanced complexity and accuracy among deep learning image classification algorithms for automatic diatom recognition, and to explore the most suitable classification algorithm for diatom recognition to provide data reference for automatic diatom testing research in forensic medicine.
METHODS:
The "diatom" and "background" small sample size data set (20 000 images) of digestive fluid smear of corpse lung tissue in water were built to train, validate and test four convolutional neural network (CNN) models, including VGG16, ResNet50, InceptionV3 and Inception-ResNet-V2. The receiver operating characteristic curve (ROC) of subjects and confusion matrixes were drawn, recall rate, precision rate, specificity, accuracy rate and F1 score were calculated, and the performance of each model was systematically evaluated.
RESULTS:
The InceptionV3 model achieved much better results than the other three models with a balanced recall rate of 89.80%, a precision rate of 92.58%. The VGG16 and Inception-ResNet-V2 had similar diatom recognition performance. Although the performance of diatom recall and precision detection could not be balanced, the recognition ability was acceptable. ResNet50 had the lowest diatom recognition performance, with a recall rate of 55.35%. In terms of feature extraction, the four models all extracted the features of diatom and background and mainly focused on diatom region as the main identification basis.
CONCLUSIONS
Including the Inception-dependent model, which has stronger directivity and targeting in feature extraction of diatom. The InceptionV3 achieved the best performance on diatom identification and feature extraction compared to the other three models. The InceptionV3 is more suitable for daily forensic diatom examination.
Algorithms
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Deep Learning
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Diatoms
;
Humans
;
Neural Networks, Computer
;
ROC Curve
7.Evaluation of Inspection Efficiency of Diatom Artificial Intelligence Search System Based on Scanning Electron Microscope.
Dan-Yuan YU ; Jing-Jian LIU ; Chao LIU ; Yu-Kun DU ; Ping HUANG ; Ji ZHANG ; Wei-Min YU ; Ying-Chao HU ; Jian ZHAO ; Jian-Ding CHENG
Journal of Forensic Medicine 2022;38(1):40-45
OBJECTIVES:
To explore the application values of diatom artificial intelligence (AI) search system in the diagnosis of drowning.
METHODS:
The liver and kidney tissues of 12 drowned corpses were taken and were performed with the diatom test, the view images were obtained by scanning electron microscopy (SEM). Diatom detection and forensic expert manual identification were carried out under the thresholds of 0.5, 0.7 and 0.9 of the diatom AI search system, respectively. Diatom recall rate, precision rate and image exclusion rate were used to detect and compare the efficiency of diatom AI search system.
RESULTS:
There was no statistical difference between the number of diatoms detected in the target marked by the diatom AI search system and the number of diatoms identified manually (P>0.05); the recall rates of the diatom AI search system were statistically different under different thresholds (P<0.05); the precision rates of the diatom AI system were statistically different under different thresholds(P<0.05), and the highest precision rate was 53.15%; the image exclusion rates of the diatom AI search system were statistically different under different thresholds (P<0.05), and the highest image exclusion rate was 99.72%. For the same sample, the time taken by the diatom AI search system to identify diatoms was only 1/7 of that of manual identification.
CONCLUSIONS
Diatom AI search system has a good application prospect in drowning cases. Its automatic diatom search ability is equal to that of experienced forensic experts, and it can greatly reduce the workload of manual observation of images.
Artificial Intelligence
;
Diatoms
;
Drowning/diagnosis*
;
Humans
;
Liver
;
Lung
;
Microscopy, Electron, Scanning
8.Construction and Application of YOLOv3-Based Diatom Identification Model of Scanning Electron Microscope Images.
Ji CHEN ; Xiao-Rong LIU ; Jia-Wen YANG ; Ye-Qiu CHEN ; Cheng WANG ; Meng-Yuan OU ; Jia-Yi WU ; You-Jia YU ; Kai LI ; Peng CHEN ; Feng CHEN
Journal of Forensic Medicine 2022;38(1):46-52
OBJECTIVES:
To construct a YOLOv3-based model for diatom identification in scanning electron microscope images, explore the application performance in practical cases and discuss the advantages of this model.
METHODS:
A total of 25 000 scanning electron microscopy images were collected at 1 500× as an initial image set, and input into the YOLOv3 network to train the identification model after experts' annotation and image processing. Diatom scanning electron microscopy images of lung, liver and kidney tissues taken from 8 drowning cases were identified by this model under the threshold of 0.4, 0.6 and 0.8 respectively, and were also identified by experts manually. The application performance of this model was evaluated through the recognition speed, recall rate and precision rate.
RESULTS:
The mean average precision of the model in the validation set and test set was 94.8% and 94.3%, respectively, and the average recall rate was 81.2% and 81.5%, respectively. The recognition speed of the model is more than 9 times faster than that of manual recognition. Under the threshold of 0.4, the mean recall rate and precision rate of diatoms in lung tissues were 89.6% and 87.8%, respectively. The overall recall rate in liver and kidney tissues was 100% and the precision rate was less than 5%. As the threshold increased, the recall rate in all tissues decreased and the precision rate increased. The F1 score of the model in lung tissues decreased with the increase of threshold, while the F1 score in liver and kidney tissues with the increase of threshold.
CONCLUSIONS
The YOLOv3-based diatom electron microscope images automatic identification model works at a rapid speed and shows high recall rates in all tissues and high precision rates in lung tissues under an appropriate threshold. The identification model greatly reduces the workload of manual recognition, and has a good application prospect.
Diatoms
;
Drowning/diagnosis*
;
Humans
;
Liver/diagnostic imaging*
;
Lung/diagnostic imaging*
;
Microscopy, Electron, Scanning
9.Pathway of Diatoms Enter Experimental Rabbits through the Lymphatic System of the Digestive Tract.
Yu-Kun DU ; Jing-Jian LIU ; Xiao-Dong KANG ; Zhong-Hao YU ; Dong-Yun ZHENG ; He SHI ; Qu-Yi XU ; Jian-Jun REN ; Chao LIU ; Jian ZHAO
Journal of Forensic Medicine 2022;38(1):67-70
OBJECTIVES:
To study whether diatoms can enter the body through the lymphatic system of the digestive tract.
METHODS:
Twenty experimental rabbits were divided into the test group and the control group randomly, and intragastric administration was performed with 20 mL water sample from the Pearl River and 20 mL ultrapure water, respectively. After 30 min, lymph, lungs, livers and kidneys were extracted for the diatom test. The concentration, size and type of diatoms were recorded.
RESULTS:
The concentration of diatoms of the test group was higher than that of the control group (P<0.05). In the test group, Stephanodiscus, Coscinodiscus, Cyclotella, Melosira, Nitzschia, Synedra, Cymbella, and Navicula were detected; in the control group, Stephanodiscus, Coscinodiscus and Cyclotella were detected. The long diameter and the short diameter of diatoms of the test group were higher than those of the control group (P<0.05). In the test group, 1-2 diatoms were detected in 3 lung samples and 2 liver samples, which were Stephanodiscus or Cyclotella, and no diatoms were detected in the kidney samples; in the control group, 1-2 diatoms were detected in 2 lung samples and 3 liver samples, which were Stephanodiscus or Coscinodiscus, and no diatoms were detected in the kidney samples.
CONCLUSIONS
Diatoms can enter the body through the lymphatic fluid, which is one of the reasons for the presence of diatoms in tissues and organs of non-drowning cadavers.
Animals
;
Diatoms
;
Drowning
;
Gastrointestinal Tract
;
Lung
;
Lymphatic System
;
Rabbits
;
Water/metabolism*
10.Effects of Digestive Temperature and Time on Diatom Test.
Jing-Jian LIU ; Yu-Kun DU ; Jian ZHAO ; Xiao-Dong KANG ; Zhong-Hao YU ; Dong-Yun ZHENG ; He SHI ; Qu-Yi XU ; Li-Fang CHEN ; Chao LIU
Journal of Forensic Medicine 2022;38(1):77-81
OBJECTIVES:
To study the effects of temperature and time for diatoms digestion and find out suitable digestive temperature and time.
METHODS:
Eighty pieces of liver tissues were collected, each piece of tissue was 2 g, and 2 mL Pearl River water was added to each piece of tissue. The digestion temperature was set at 100 ℃, 120 ℃, 140 ℃, 160 ℃, 180 ℃ and the digestion time was set at 40, 50, 60, 70, 80 min. The liver tissue and water mixture were divided into 8 portions in each group. All the samples were tested by microwave digestive - vacuum filtration - automated scanning electron microscopy method. The quantity of diatom recovered and the quality of residue on the membrane were recorded.
RESULTS:
When the digestion time was set to 60 min, there were statistically significant differences in the number of diatoms recovered at different temperatures (P<0.05). The maximum number of diatoms recovered was (28 797.50±6 009.67) at 140 ℃, and the minimum residue was (0.60±0.28) mg at 180 ℃. When the digestion temperature was set at 140 ℃, there were statistically significant differences in the number of diatoms recovered at different digestion times (P<0.05). The number of diatoms recovered was the highest at 40 min, it was up to (20 650.88±1 950.29), and the residue quality of each group had no statistical significance among different digestion time groups(P>0.05).
CONCLUSIONS
The effect of diatom digestion is related to temperature and time. When the digestion temperature was 140 ℃ and the digestion time was 40, 50 and 60 min, it is favorable for diatom test.
Diatoms
;
Drowning
;
Forensic Pathology/methods*
;
Temperature
;
Water

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